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Article

A Multi-Objective Local Optimization Method for Imaging Optical Systems

1
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun 130033, China
2
University of the Chinese Academy of Sciences, Beijing 100039, China
3
State Key Laboratory of Applied Optics, Changchun 130033, China
4
Key Laboratory of Optical System Advanced Manufacturing Technology, Chinese Academy of Sciences, Changchun 130033, China
*
Author to whom correspondence should be addressed.
Photonics 2023, 10(11), 1218; https://doi.org/10.3390/photonics10111218
Submission received: 19 September 2023 / Revised: 23 October 2023 / Accepted: 29 October 2023 / Published: 31 October 2023

Abstract

:
Addressing the inherent limitations of conventional local optimization methodologies such as damping least squares (DLS) and adaptation algorithms, this study proposes a novel approach to multi-objective optimization for imaging optical systems. The proposed method entails the formulation of a multi-objective optimization mathematical framework, where the objectives are established upon lateral aberration and wave aberration criteria. Subsequently, enhancements are made to the Non-dominated Sorting Genetic Algorithm-II (NSGA-II) by implementing a directional initial population strategy and parallel optimization with multiple-trajectory planning. The genesis of the initial population is rooted in the gradient direction information extracted from the starting positions. This strategic foundation precludes potential efficiency limitations in subsequent optimization stages arising from undesirable initial population quality. By employing mechanisms such as differentiation and mutation to sustain population diversity, the trajectory of evolution is guided by the first- and second-order derivatives of the optimal individual, thereby elevating the quality of the evolutionary offspring population. The fusion of the parent and offspring populations yields a composite population, which undergoes rapid and non-dominated sorting, crowding calculation, and elite strategies. Empirical results illustrate the validation of the proposed methodology. The proof-of-concept paradigm demonstrates high efficiency in multi-objective local optimization for imaging optical systems.

1. Introduction

In optical design, optimization constitutes a systematic endeavor to attain optimal outcomes under specified conditions. This pursuit aims to minimize the error function subject to certain constraints. Advanced, automatic optimization methods play a pivotal role in effectively and accurately determining the feasibility of achieving exemplary design results.
The current imaging optical systems are marked by increasing demands, propelled by advances in optical technology. These optical systems are expected to deliver exceptional image quality, evolving toward the large field, large aperture, and wideband to meet the diverse demands. Moreover, optical systems have grown increasingly complex, transitioning from coaxial and off-axis configurations to partial-axis ones, and from spherical and aspheric surfaces to freeform surfaces. Consequently, the task of seeking the increasingly untraceable initial structure of optical systems, whether in existing systems or patent libraries, has become infeasible.
Complex optical systems inherently involve a multitude of structural parameters for optimization, comprising continuous and discrete variables. Aberrations manifest as nonlinear functions of these variables, impeding the derivation of analytical expressions. Additionally, aberrations are asymmetric in an optical system with freeform surfaces [1,2,3]. The types of aberrations are also increasing and lack orthogonal relationships, resulting in a number of local minima within the multidimensional variable space, rendering the quest for optimal solutions in imaging optical systems a hard effort. Commercial optical design software, like CODE V and Zemax, predominantly employs the DLS method for automated local optimization of imaging optical systems, focusing on one specific objective, such as RMS spot, wave aberration, or MTF. Alternatively, users can achieve optimization by constructing complex error functions, such as combining lateral aberration with wavefront aberration to form a complex error function, and then performing optimization. However, this approach transforms multiple objectives into a single objective, which achieves the optimization process through a single objective algorithm, essentially. As a result, recent research in imaging optical systems has concentrated on single-objective optimization [4,5,6]. However, conventional single-objective local optimization methodologies, such as DLS and adaptive methods, may prove inadequate for complex optical system types that necessitate the simultaneous optimization of multiple targets.
Numerous multi-objective optimization algorithms have been proposed to solve problems that single-objective optimization algorithms cannot overcome. David Goldberg proposed a multi-objective optimization technique named genetic algorithm (GA) [7]. Subsequently, Srinivas and Deb devised NSGA, grounded in the concept of non-dominated sorting [8]. Deb et al. enhanced NSGA with NSGA-II [9], which adopts the congestion and crowding comparison operator as the winning criterion in peer comparison after fast sorting and maintaining the diversity of populations. The proposed method also introduces the elitist strategy, enlarges the sample space, prevents the loss of the best individual, and improves the computing speed and robustness of the algorithm. The algorithm is highly suitable for processing multi-objective optimization problems with ≤3 objective dimensions. R Furtuna et al. designed a method based on NSGA-II to improve the multi-objective optimization problem in the chemical synthesis process. However, the application is not universal as it requires high parametric conditions during chemical reactions [10]. Hossein et al. proposed an enhanced version of NSGA-II to solve the fuzzy bi-objective assembly line balancing problem, where the objective function is to minimize the number of workstations and the fuzzy cycle time [11]. Khettabi et al. first proposed a reconfigurable manufacturing system for cost, time efficiency, and environmental awareness. Adaptive dynamic NSGA-II and NSGA-III were developed for this system [12].
The objective optimization algorithms mentioned above are all based on genetic algorithms. Nevertheless, these algorithms remain somewhat specialized, being tailored to specific multi-objective problems such as allocation [13,14,15], vehicle routing [16,17,18], the traveling salesman problem [19], and scheduling dilemmas [20,21,22]. Their universal applicability is limited because a generic problem-solving approach may not surpass a technique specifically tailored to the given problem. The precision and efficiency of these algorithms would not meet the application requirements in the complex operating environment of the target to be optimized, such as the multi-objective optimization of imaging optical systems. Therefore, this paper makes improvements to the traditional NSGA-II multi-objective optimization algorithm to make it suitable for optimizing imaging optical systems.
This paper investigates the use of the multi-objective local optimization method—an algorithm that does not require transforming multiple objectives into one—with optical systems. It can directly optimize multiple objectives simultaneously and provide a non-dominated solution set as the output. This solution set allows designers to find the optimal solution according to their optimization target and strategy. This approach significantly improves the efficiency of optical design and the quality of design results, which has both theoretical significance and practical value for developing optical optimization technology.

2. Methods

2.1. Mathematical Model of Multi-Objective Optimization

Optimizing optical systems involves minimizing error functions in the multidimensional nonlinear space of structural parameters. The error function of an optical system reflects the imaging quality of the system and is a complex nonlinear function associated with structural parameters. Considering the requirements for system design—including focal length, magnification, image distance, and exit pupil position—the error function is subject to constraints that can be mathematically expressed as linear and nonlinear equations related to the structural parameters of the system.
Traditional optimization for optical systems usually adopts single-objective optimization methods, such as the DLS and adaptation methods. The mathematical model is shown in Equation (1).
min Φ X s . t . g i X 0 i = 1 , 2 , , m h j X = 0 j = 1 , 2 , , l ,
where Φ(X) is the objective error function; g(X) is the inequality constraint; h(X) is the equality constraint; and X = [x1, x2, x3, …, xn] are variables of the optical system.
Facing various requirements of the upcoming design, the multi-objectives, usually featuring trade-offs, should simultaneously be minimized to a desirable level. However, even if one error function has fallen into the required level, it poses a challenge to achieve the simultaneous decline of multiple objectives. For instance, commercial imaging optical software—such as CODE V and Zemax—can effectively optimize the system when combined with one error function, including lateral aberration, wavefront aberration, and MTF, all of which can reflect the imaging quality of the optical system from different perspectives. However, the single-objective optimization process based on such software cannot guarantee other error function reduction. Here, the mathematical model of the multi-objective framework is listed in Equation (2).
min Φ 1 X min Φ 2 X s . t . g i X 0 i = 1 , 2 , , m h j X = 0 j = 1 , 2 , , l ,
where Φ1(X) and Φ2(X) are the error functions; g(X) is the inequality constraint; h(X) is the equality constraint; and X = [x1, x2, x3, …. xn] are variables of the optical system.
In essence, multi-objectives need to be optimized simultaneously for optical systems that pursue the ultimate performance of these aberrations. In this study, we constructed a double objective error function associated with lateral and wave aberration for this purpose.
The lateral aberration error function represents a center-weighted RMS spot size, where the function is calculated by ray tracing through the ray grid of each weighted wavelength and field. As the sum of squares of the aberration function, the structure of the function is conducive to the convergence of subsequent models [23]. The calculation for the lateral aberration error function is shown in Equation (3).
Φ 1 = F λ R W F · W λ · W R · Δ η 2 + W F · W λ · W R · Δ δ 2 = 1 M f i 2 ,
where Φ1 is the lateral aberration error function; WF is the weight of field; Wλ is the weight of wavelength; Δη and Δδ are lateral aberrations of meridian and sagittal directions; WR is the weight of the aperture’s position; fi is the sum of aberrations for each field and wavelength; and M is the product of the number of fields and working wavelength.
Specifically, lateral aberration is calculated by tracing the rays of sampling points for each field and wavelength to obtain the x and y coordinate values of each ray at the image plane. The coordinate value pertaining to the principal ray on the image plane from the previously acquired coordinate value is to be subtracted. The lateral aberration Δx and Δy can be obtained in the x and y directions.
The weight of the aperture represents the proportion of light rays with different apertures. The weight increases as the aperture position of the light decreases. The weight of the aperture can be calculated using Equation (4).
W R = 1 ρ X 2 + ρ Y 2 ,
where WR is the weight of the aperture, and (ρx, ρY) represents the coordinates of the light rays in the pupil.
The wavefront aberration error function is used for characterizing the difference between the actual wavefront and the ideal wavefront. Here, the optical path difference is calculated by tracing the sampled rays at each wavelength and field, and
Φ 2 = F λ R W F · W λ · W R · o p d 2 ,
where Φ2 is the wavefront aberration error function; WF is the weight of field; Wλ is the weight of wavelength; WR is the weight of aperture position; and opd is the optical path difference.

2.2. Method Design

2.2.1. Establishment of Directional Initial Population

Initializing the population is the first step in optimization methods and serves as the foundation of the overall strategy. Optimizing the initial population can improve subsequent convergence efficiency. In the population initialization stage, the traditional strategy usually adopts random steps to construct the initial population, which has a relatively high possibility of causing a deterioration in the imaging quality of the optical system because the solution may fall into a local optimum. Meanwhile, the strategy would initially form many infeasible schemes, thereby reducing the computational efficiency of the algorithm. This study proposes establishing an initial population based on the gradient direction information in order to address this issue. This approach helps to avoid the problem of low-quality initial populations, leading to improved efficiency in subsequent optimization.
First, the improved Levenberg–Marquardt (LM) method [24] is adopted to confirm the initial population direction. According to the initial variables and error function information, the second-order Taylor expansion [25] approximates the error function Φ1 at xk, as shown in Equation (6).
Φ 1 x k + d = Φ 1 x k + Φ 1 x k T   d + 1 2 d T 2 Φ 1 x k d Φ 1 x k = x k T   f x k 2 Φ 1 x k = J x k T   J x k + i = 1 M f i x k 2 f i x k ,
where error functions are characterized by vectors f = [f1, f2, … fN]; J(xk) is the Jacobi matrix of f(xk) at xk; and ∇2 fi(xk) is the Hessian matrix of f(xk) at xk.
By taking the derivative of Equation (6), Equation (7) can be obtained as follows:
d = J T J + H T f 1 · J T f ,
where f is the error function vector matrix for each field and each band; J is the Jacobi matrix of f; H is the Hessian matrix of f; and d is the step for variable changes, which causes the error function to decrease.
The initial population is established based on the descending direction, d, as shown in Equation (8).
v i = v 0 + i 1 d ,
where v0 is the initial variable vector; vi is the i-th value of the initial population, i ∈ (1, M); M is the total number of populations; and d is the step calculated by Equation (7).
As a result, an initial population is established along the determined direction, providing a reliable initial guess for the subsequent evolution process. This approach can effectively accelerate population convergence and improve the accuracy of solutions.

2.2.2. Multi-Trajectory Parallel Evolution

The evolution operation is the core step of optimization algorithms based on GA, which directly inherits excellent individuals to the next generation through selection, or generates new individuals through pairing, crossover, and mutation. This step determines the quality of the offspring population. The traditional NSGA-II algorithm often generates offspring through tournament selection algorithms. Binary tournaments involve extracting two individuals from the population at once, selecting the optimal individual from the pair, and placing it into the next generation population. This selection mechanism is unsuitable for specific multi-objective problems since it lacks a clear evolutionary direction, making it challenging to drive the optical system to a desirable optimal level. To address this issue, this paper further proposes a multi-trajectory parallel optimization strategy to improve the quality of the offspring population and ensure diversity through various means.
The evolutionary process for offspring generation is divided into two strategies—the LM strategy and the differential strategy. The LM strategy is adopted in order to improve the quality of the offspring population, and the differential strategy is used to enhance the diversity of the offspring population.
For the LM strategy, the individual with the best quality in the parent generation is selected as the reference point in each offspring evolution process, and its descent direction is calculated as the evolution direction. During evolution, 50% of the parent generation’s population is added to the step length in the descending direction to achieve evolution.
For the differential strategy, a particular offspring evolution mechanism is achieved by randomly selecting three individuals from the parent population and differentiating two of them. The differentiated results are then combined with other individuals by setting a scaling factor and a particular mutation rate to obtain new offspring individuals.
v i = v 1 i + F v 2 i v 3 i if rand 0 , 1 R v 0 i otherwise ,
where v0i is the i-th initial variables; vi is the i-th variables of the offspring population; v1i, v2i, and v3i are the i-th variable of three individuals randomly selected from the parent population, respectively; F is the scaling factor; and R is the mutation rate.
The offspring population obtained through differential strategy evolution accounts for 50% of the total population. Therefore, for the parent population with a quantity of M, one half of the offspring population is evolved through the LM strategy, and the other half is evolved through the differential strategy. The parent and offspring populations are then merged into a population of 2M, and the best M individuals are selected to enter the next generation population.

2.2.3. Method Process

This paper proposes a multi-objective optimization method for imaging optical systems by improving NSGA-II. The schematic diagram of the proposed multi-objective optimization method is shown in Figure 1. In Figure 1, L1 … Lm represents non-dominated levels; LC1 … LCn represents population individuals within the same non-dominated level, in descending order of crowding; Pt represents the original population; and Pt+1 represents a new population after evolution for one generation. Specifically, the initial population is established based on the gradient direction information of the optimized initial value, which helps in avoiding low efficiency in subsequent optimization due to poor initial population quality. Additionally, multi-trajectory parallel evolution is made to enhance the quality and diversity of the offspring population.
The algorithmic process is depicted in Figure 2. Initially, a population comprising M individuals is established based on predefined error functions and gradient information pertaining to the initial variables. The computational procedure can be referenced via Equations (7) and (8). The generation of offspring is accomplished through the crossing of parent individuals, resulting in N offspring. After setting the crossover probability CR, the offspring population quantity N is the product of the parent population quantity M and the crossover probability, i.e., N = M × CR. Subsequently, the evolutionary process is divided into two parallel strategies. Half of the N offspring populations undergo evolution using the LM strategy, while the remaining half evolve through the differential strategy. Consequently, N offspring populations are generated by employing the parallel evolutionary approaches. In the next phase, the parent and offspring populations are amalgamated to form a new population consisting of (M + N) individuals. The population level is established and individuals are sorted within the level through non-dominated sorting and crowding calculation. The elimination operation is performed, retaining only the first M individuals to update the population. The iteration termination condition is evaluated by reaching the maximum number of iterations.

3. Experiments and Results

To evaluate the validation of the proposed method, two sets of multi-objective optimization experiments are conducted using a Cooke optical system (Case 1) and a self-developed telescope system (Case 2). In Case 1, the system has been optimized for spot size using commercial software CODE V (version: CODE V 11.5), which is a minor aberration system, as shown in Figure 3. For Case 2, the image quality has not been optimized, which has a relatively large aberration compared with Case 1, as shown in Figure 4. Double objective optimization upon lateral and wave aberration error functions is performed. The variables of the system are labeled in Figure 3 and Figure 4, including curvatures and thicknesses, respectively marked with “C” and “d”. The multi-objective error function and optimization program is coded by Matlab R2017a, and the ray tracing of CODE V software is invoked to achieve the optimization iteration process. The number of individuals in the initial population, M, is set as 50; the number of offspring population, N, is 30; the scaling factor, F, is set as 0.5; and 0.5 of the variation rate (R) is adopted in Equation (9).
Table 1 shows the basic parameters of the optical systems used in the two cases. A single wavelength for both lenses is employed to simplify the experimental parameters and exclude the influence of chromatic aberration factors, such as the secondary spectrum. These parameters were carefully selected to ensure accurate and reliable experimental results.

3.1. Experiment with the Cooke System

The initial parameters and variables of the Cooke optical system are shown in Table 2. We have set nine variables in this system, labeled with “v” in the table. Through calculation, the lateral aberration error function of this system is 18.236, and the wavefront aberration error function is 1.435. We attempted to increase the thickness of surface 4 and the curvature of surface 1 of the Cooke system, in order to characterize the mapping relationship between the optical system variables and the error function. Then, the lateral aberration error function and wavefront aberration error function under the corresponding optical system parameters are calculated.
Figure 5 shows the relationships between the variation of the double objective and both the thickness of surface 4 and the curvature of surface 1. These results provide insights into the impact of optical system variables on error functions and a hint for guiding the optimization process. As shown in Figure 5a, the lateral aberration and wavefront aberration error functions exhibit a similar increasing trend with the thickness of surface 4 in the interval from 6.5 to 9. However, for the curvature variable, as shown in Figure 5b, the trends of the two error functions are consistent in the interval of curvature from 0.05 to 0.08. In contrast, in the interval of curvature from 0.08 to 0.082 and from 0.086 to 0.009, the wavefront aberration error function decreases while the lateral aberration error function increases. These results suggest that the trends of the lateral aberration and wavefront aberration error functions are generally consistent. However, there are also situations where their trends are contradictory. It should be noted that the thickness of surface 4 and the curvature of surface 1 are randomly chosen. We can obtain similar conclusions by modifying the variables to other surfaces and performing this process again.
Since the image quality of this system has already reached a better standard than the initial state, it is easy to deteriorate the originally better image quality again if the initial population is established by randomly adding step length with this initial variable into the 9-dimensional variable space. By using the proposed method of establishing a directional initial population, we calculated the direction vector s = [5.591 × 10−7, −1.706 × 10−7, −1.002 × 10−8, −5.435 × 10−8, −2.238 × 10−7, 2.702 × 10−7, 0.0005946, −0.001302, 0.001457], which refers to the direction of evolution when establishing the population. The variables in Table 2 were used as initial values, while the direction vector s was used as the step length to create an initial population with a number of 50 by Equation (8). Figure 6 shows the Pareto fronts for different evolutionary stages. The initial position and Pareto front for evolutionary generations 25, 50, 75, 100, and 200 are also labeled in the figure. Since this is a multi-objective analysis, the final result is not unique, but a set of non-dominated solutions, and the final optimal solution can be selected from the solution set according to the design needs.
As shown in Figure 6, the proposed multi-objective optimization method achieves much better double-objective function reduction compared to the original NSGA-II algorithm for the same number of evolutionary generations. Figure 6a shows that the optimized results of the original NSGA-II algorithm are worse than they were in the initial position. In contrast, the Pareto fronts of the proposed method continue converging to the lower left as the number of evolutionary generations increases, and the optimization results continue to improve with respect to the initial results. Although CODE V has previously optimized the Cooke optical system, our proposed method further improves its performance. Optimization results of 200 generations are selected as the final Pareto solution set. If we choose a lateral aberration error function value of 16.522 in this solution set as an acceptable position, the wavefront aberration error function is 1.077. The initial and optimized variables and error functions of the Cooke system are shown in Table 3. After this optimization, there is a reduction of 12.26% in the lateral aberration error function and 24.94% in the wavefront aberration error function. It should be noted that our criterion for selecting acceptable positions is the desire to have an effective balance between the lateral aberration error function and the wavefront aberration error function values. In practical applications, designers can define the judgement criteria of acceptable positions according to the design needs of different optical systems.
Figure 7 shows the comparison of wavefront aberration before and after optimization, with RMS values of 0.0644λ, 0.286λ, and 0.172λ for the three fields of the system before optimization. After optimization, the RMS values of the three fields of the system are: 0.0465λ, 0.303λ, and 0.107λ. Although the wavefront aberration of the second field has slightly increased compared to before optimization, the overall wavefront aberration value of the entire system has improved. These results demonstrate that the proposed method effectively converges the error function of the minor aberration system, resulting in a significant enhancement of image quality.

3.2. Experiment of the Self-Developed Telescope System

The image quality of the self-developed telescope system has not been optimized previously. The initial image quality is poor due to its large aberration. The number of variables in this system is 21, and the variables are labeled with “v” in the table. The initial parameters of this telescope system are shown in Table 4.
Figure 8 shows the Pareto front curve after 200 generations of optimization using the proposed multi-objective optimization method and NSGA-II. The results demonstrate that this algorithm optimized the telescope system more effectively compared to NSGA-II. Utilizing the proposed algorithm, both the lateral aberration and wavefront aberration were greatly improved as a result of the optimization. If we choose a lateral aberration error function value of 19.230 as an acceptable position, the final wavefront aberration is 1.709.
Comparisons of variable values and error functions before and after optimization are shown in Table 5. The initial lateral aberration error function was 20,957.51, and the initial wavefront aberration error function was 106.24 before optimization. After optimization, the values of the double objective functions were reduced to 19.230 and 1.709, respectively. These results demonstrate a significant reduction in error functions by about two to three orders of magnitude compared to the initial state. The results highlight the effectiveness of our proposed method for optimizing large aberration systems.
A comparison of the RMS geometry spot and MTF before and after optimization is shown in Figure 9. Before optimization, the average RMS spot diameter of the optical system was 0.404 mm. After optimization, this value was significantly reduced to 0.00729 mm. Additionally, the MTF at the feature frequency of 60 lp/mm was less than 0.1 before optimization, but increased to more than 0.6 for the full field after optimization. These results demonstrate that the proposed method effectively converges the error function of the large aberration system, resulting in significant improvements in image quality.
The above experiments have revealed that the method proposed can optimize two objective functions simultaneously. To further demonstrate the applicability of the proposed method, we constructed the third error function based on distortion in this section. Among them, Objective 1 is the lateral aberration error function, and Objective 2 is the wave aberration error function. The construction of these two error functions has been described in Section 2.2.1. Target 3 is the error function based on distortion, which represents the deformation between the actual image plane and the ideal image plane after imaging by an optical system. The calculation for the error function based on distortion is shown in Equation (10).
Φ 3 = L p L L × 100 %
where Φ3 represents the error function based on distortion, L’ is the paraxial image height, and L’p is the main ray image height in the current field.
The test cases and optimization variables in three objective optimization experiments are consistent with those of the dual objective experiment, and the number of individuals in the initial population and offspring population parameters are also consistent with those of the dual objective experiment. The Cooke system (Case 1) and the self-developed telescopic system (Case 2) have been optimized for 200 generations using the proposed method. Comparisons of three error functions before and after optimization are shown in Table 6. The results demonstrate that this algorithm optimized three error functions for the Cooke and telescope system effectively. For Case 1, if we choose a lateral aberration error function value of 18.19 as an acceptable position, the final wavefront aberration error function value is 1.41 and the distortion error function value is 0.0266. Compared with the initial value, the lateral aberration, wavefront aberration, and distortion were greatly improved after optimization. For the large aberration system, Case 2, the proposed algorithm has also improved the three objectives, ultimately achieving ideal image quality for the large aberration optical system.

4. Discussion

Simulation experiments are conducted to demonstrate the effectiveness and reliability of the proposed multi-objective local optimization method. Firstly, error functions based on lateral and wavefront aberrations are established, and the mapping relationship between the two error functions and variables is analyzed. The results show that the variation trend of lateral and wavefront aberration error functions with the same variable is not always consistent. Sometimes, the lateral aberration and wavefront aberration trends are contradictory. Subsequently, two sets of multi-objective optimization experiments were conducted using small and large aberration systems, respectively. For the small aberration system (Case 1), although the image quality of the system has been optimized previously, the proposed method can still further improve it. For the large aberration system (Case 2), the lateral and wavefront aberrations of the system have been greatly improved after optimization, and the Prato front solution set is provided as output. By taking one set of acceptable values as the final result, the average RMS spot diameter of the optical system before optimization is 0.404 mm, and the value after optimization is 0.00729 mm. The MTF at the feature frequency of 60 lp/mm before optimization is less than 0.1, and the value after optimization is higher than 0.6. Therefore, this method has excellent universality for small and large aberration optical systems. For time efficiency, the implementation process of this algorithm mainly takes up two periods of time: one is the time for invoking CODE V from Matlab, and the other is the running time for the optimization algorithm in Matlab. The running time of pure optimization algorithms is much lower than that of invoking CODE V from Matlab, and the data transfer between software interfaces takes up a lot of time. Taking self-developed telescope systems for example, when iterating for 25 generations, the optimization algorithm time is 3.2 s, while the time for invoking CODE V from Matlab is 163.7 s, which takes up 98.08% of the total program running time. If only one type of software is used for achieving the entire optimization process, the optimization efficiency will be greatly improved. It should be further noted that since the method made enhancements to NSGA-II, non-dominated sorting and crowding calculation operations are still preserved. Therefore, this proposed method is more suitable for situations where the number of optimization objectives is ≤3. In addition, the proposed method is currently applicable to unconstrained multi-objective optimization for imaging optical systems, and methods based on penalty function or searching for feasible solutions can be employed to handle cases with constraints. However, by effectively improving the performance of optical systems, the proposed method can contribute to the development of high-quality optical systems for a range of applications. Meanwhile, the idea of directional calculation of initial population and multi-trajectory parallel evolution proposed in this study has a certain reference value in other multi-objective optimization algorithms based on search or evolution.

5. Conclusions

In order to address the inherent limitations of conventional local optimization methodologies, such as DLS and adaptation algorithms, we have proposed a multi-objective optimization method suitable for imaging optical systems, where the objectives are established upon lateral aberration, wave aberration, and distortion criteria. Subsequently, enhancements were made to the NSGA-II algorithm by implementing a directional initial population strategy and parallel optimization with multiple-trajectory planning. These enhancements help to identify the direction of evolution and ensure the diversity of the population. The parent and offspring populations are merged into a new population, and fast and non-dominated sorting, crowding calculation, and elite strategy are performed on the population. Experimental results demonstrate the effectiveness of the proposed method. With the initial parameters optimized by CODE V, our method further reduces the lateral and wavefront aberration error functions of the Cooke system by 12.26% and 24.94%, respectively. For the self-developed telescope system, the average RMS spot diameter of the optical system before optimization is 0.404 mm, and the value after optimization is 0.00729 mm. The MTF at the feature frequency of 60 lp/mm before optimization is less than 0.1, and the value after optimization is higher than 0.6. This study provides essential guidance for applying multi-objective optimization in imaging optical systems, and contributes to the development of high-quality optical systems for a range of applications.

Author Contributions

Conceptualization, S.Z.; methodology, S.Z. and H.W.; software, S.Z. and H.Y.; validation, S.Z. and J.H.; formal analysis, S.Z.; investigation, M.H.; resources, X.Z.; data curation, H.Y.; writing—original draft preparation, S.Z. and J.H.; visualization, H.Y.; supervision, X.Z.; project administration, X.Z.; funding, S.Z. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by the National Natural Science Foundation of China (NSFC) (No. 62005271).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

We appreciate the help provided by Maoyuan Li from Oslo University Hospital, Rikshospitalet, Oslo, Norway, and the Norwegian University of Science and Technology, Trondheim, Norway.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Schematic diagram of the proposed multi-objective optimization method.
Figure 1. Schematic diagram of the proposed multi-objective optimization method.
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Figure 2. Flow chart of the proposed multi-objective optimization method.
Figure 2. Flow chart of the proposed multi-objective optimization method.
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Figure 3. Cooke optical system (Case 1).
Figure 3. Cooke optical system (Case 1).
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Figure 4. Self-developed telescope system (Case 2).
Figure 4. Self-developed telescope system (Case 2).
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Figure 5. Mapping the relationship of the double objective function with respect to the variables. (a) Trend of the double objective function with thickness of surface 4; (b) Trend of the double objective function with curvature of surface 1.
Figure 5. Mapping the relationship of the double objective function with respect to the variables. (a) Trend of the double objective function with thickness of surface 4; (b) Trend of the double objective function with curvature of surface 1.
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Figure 6. Optimization results of different algorithms. (a) Pareto front for the evolutionary process of NSGA-II; (b) Pareto front for the evolutionary process of the proposed multi-objective optimization method.
Figure 6. Optimization results of different algorithms. (a) Pareto front for the evolutionary process of NSGA-II; (b) Pareto front for the evolutionary process of the proposed multi-objective optimization method.
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Figure 7. Comparison of image quality before and after optimization. (a) Wave aberration before optimization; (b) wave aberration after optimization.
Figure 7. Comparison of image quality before and after optimization. (a) Wave aberration before optimization; (b) wave aberration after optimization.
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Figure 8. Optimization results of the proposed multi-objective optimization method compared with NSGA-II.
Figure 8. Optimization results of the proposed multi-objective optimization method compared with NSGA-II.
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Figure 9. Comparison of image quality before and after optimization. (a) RMS spot field map before optimization; (b) RMS spot field map after optimization; (c) MTF before optimization; (d) MTF after optimization.
Figure 9. Comparison of image quality before and after optimization. (a) RMS spot field map before optimization; (b) RMS spot field map after optimization; (c) MTF before optimization; (d) MTF after optimization.
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Table 1. Basic parameters of the optical systems used in two cases.
Table 1. Basic parameters of the optical systems used in two cases.
Parameters of LensCooke Optical SystemSelf-Developed Telescope System
Entrance pupil diameter10 mm63 mm
Focal length51 mm180 mm
Field of view28°11°
Wavelength550 mm587 mm
Table 2. Initial parameters and variables of Case 1.
Table 2. Initial parameters and variables of Case 1.
SurfaceCurvatureThickness (Unit: mm)Glass
10.0454 v3.259SK16
2−0.00323 v7.174 v
3−0.0462 v1.007F2
40.0574 v6.451 v
50.0137 v2.788SK16
6−0.0551 v43.24 v
Table 3. Initial and optimized variables and error functions of Case 1.
Table 3. Initial and optimized variables and error functions of Case 1.
Comparative ContentThe Initial Value of the SystemOptimized Value
VariablesC10.04540.0450
C2−0.00323−0.00188
C3−0.0462−0.0445
C40.05740.0553
C50.01370.0133
C6−0.0551−0.0524
d27.174 mm8.182 mm
d46.451 mm6.590 mm
d643.24 mm43.897 mm
ObjectivesLateral aberration18.23616.522
Wavefront aberration1.4351.077
Table 4. Initial parameters and variables of Case 2.
Table 4. Initial parameters and variables of Case 2.
SurfaceCurvatureThickness (Unit: mm)Glass
10.011914 v10.5918PK2_SCHOTT
2−0.00303 v1.905 v
3−0.00561 v5.969F5_SCHOTT
40.003302 v4.6482 v
503.048
60.023713 v9.398FPL53_OHARA
70.013124 v5.461SF1_SCHOTT
80.015359 v26.0604 v
90.009632 v5.5626LLF6_SCHOTT
10−0.00233 v16.6878 v
11−0.0238 v7.5184K10_SCHOTT
12−0.0352 v3.6576SF1_SCHOTT
13−0.01353 v17.907 v
14−0.02429 v4.4958ZK1_SCHOTT
150.011279 v8.4074SF5_SCHOTT
16−0.01426 v43 v
Table 5. Initial and optimized variables and error functions of Case 2.
Table 5. Initial and optimized variables and error functions of Case 2.
Comparative ContentThe Initial Value of the SystemOptimized Value
Variables C10.0119140.01188
C2−0.00303−0.00302
C3−0.00561−0.00559
C40.0033020.00333
C60.022680.0237
C70.0237130.0131
C80.0131240.0154
C90.0153590.0096
C100.009632−0.0023
C11−0.00233−0.0237
C12−0.0238−0.0347
C13−0.0352−0.0138
C14−0.01353−0.0244
C15−0.024290.0103
C160.011279−0.0142
d21.905 mm2.262 mm
d44.6482 mm4.967 mm
d826.0604 mm25.899 mm
d1016.6878 mm16.568 mm
d1317.907 mm17.609 mm
d1643.00 mm41.723 mm
ObjectivesLateral aberration20957.5119.23
Wavefront aberration106.241.709
Table 6. Comparison of three error functions before and after optimization.
Table 6. Comparison of three error functions before and after optimization.
Comparative ContentError Function
of Lateral Aberration
Error Function
of Wavefront Aberration
Error Function
of Distortion
Case 1Before optimization18.2351.4350.0275
After optimization18.1951.4130.0266
Case 2Before optimization20957.51106.240.0147
After optimization11.8491.5480.0126
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Zhao, S.; Wu, H.; Ye, H.; Hu, J.; Hu, M.; Zhang, X. A Multi-Objective Local Optimization Method for Imaging Optical Systems. Photonics 2023, 10, 1218. https://doi.org/10.3390/photonics10111218

AMA Style

Zhao S, Wu H, Ye H, Hu J, Hu M, Zhang X. A Multi-Objective Local Optimization Method for Imaging Optical Systems. Photonics. 2023; 10(11):1218. https://doi.org/10.3390/photonics10111218

Chicago/Turabian Style

Zhao, Shangnan, Hongbo Wu, Haokun Ye, Jingaowa Hu, Mingyu Hu, and Xin Zhang. 2023. "A Multi-Objective Local Optimization Method for Imaging Optical Systems" Photonics 10, no. 11: 1218. https://doi.org/10.3390/photonics10111218

APA Style

Zhao, S., Wu, H., Ye, H., Hu, J., Hu, M., & Zhang, X. (2023). A Multi-Objective Local Optimization Method for Imaging Optical Systems. Photonics, 10(11), 1218. https://doi.org/10.3390/photonics10111218

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