Performance Evaluation of Enterprise Collaboration Based on an Improved Elman Neural Network and AHP-EW
Abstract
:1. Introduction
- (1)
- We combine the subjective AHP with the objective EW to determine the comprehensive indicator weights. A combined weight model based on minimum deviation is established to abstract the index weighting problem into a multi-attribute decision-making problem, so as to obtain a comprehensive weight with the smallest total deviation from the subjective and objective weighting results.
- (2)
- We introduce an improved Elman neural network to deal with the nonlinear relationship between index values and evaluation results. The Elman neural network with memory and self-adaptation is used to solve the dynamic and nonlinearity of the enterprise collaboration performance evaluation. On this basis, the additional momentum and adaptive learning methods are used to improve the network’s learning algorithm parameters, shorten the network’s convergence time and improve the network’s accuracy.
2. Related Work
3. Collaboration Performance Evaluation Based on Combination of AHP and EW
3.1. Construction of the Evaluation Index System for Collaboration Performance
3.1.1. Principles of Evaluation Index System
- The principle of comprehensiveness. There are many factors that affect manufacturing enterprise collaboration. When constructing the evaluation index system, various factors should be selected comprehensively, and the influence of each index should be considered in each subsequent step.
- The principle of operability. Operability means that the evaluation index and its corresponding data can be easily collected. In addition, it is necessary to ensure that the quantification of these indexes is executable.
- The principle of importance. The selected indicators should be representative and able to reflect important aspects of enterprise collaboration, that is, ignore some secondary aspects and grasp the key points.
- The principle of relevance. The evaluation index system should not only include the key influencing factors of enterprise collaboration, but also have a certain logical relationship between the indexes, so that the indexes at all levels form an index system from top to bottom.
3.1.2. Selection of Evaluation Indicators
3.2. Determining the Comprehensive Weight Based on Combination of AHP and EW
3.2.1. Determining the Subjective Weight Based on AHP
3.2.2. Determining the Objective Weight Based on EW
3.2.3. Determining the Comprehensive Weight Based on Minimum Deviation
3.3. Collaboration Performance Evaluation Based on Fuzzy Evaluation
3.3.1. Determining the Evaluation Factor Set and the Evaluation Set
3.3.2. Determining the Weight of Evaluation Factors
3.3.3. Establishment of Fuzzy Comprehensive Evaluation Matrix
3.3.4. Comprehensive Evaluation
4. Improved Elman Neural Network for Collaboration Performance Evaluation
4.1. Analysis of Evaluation Problems and Elman Neural Network
4.2. Structure Design of Elman Neural Networks
4.2.1. Determining the Number of Neurons in the Input Layer and the Output Layer
4.2.2. Hidden Layer Setting
4.2.3. Determining the Network’s Structure
4.3. Improved Elman Neural Network Algorithm
4.3.1. Weight Adjustment Based on Additional Momentum
4.3.2. Adaptive Learning Rate
- Initialize the connection weight matrix of the Elman neural network
- Randomly select 80% of the collected enterprise indicator data as the training set and input it into the network.
- Calculate the output of the hidden layer, the context layer and the output layer.
- Error back propagation.
- 5.
- The connection weight matrix w1, w2, w3 are corrected.
5. Experimental Results
5.1. Data Collection
5.2. Determination of the Number of Neurons in the Hidden Layers
5.3. Comparative Analysis of Models
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Zhang, Z.; Wang, X.; Zhu, X.; Cao, Q.; Tao, F. Cloud manufacturing paradigm with ubiquitous robotic system for product customization. Robot. Comput. Manuf. 2019, 60, 12–22. [Google Scholar] [CrossRef]
- Martino, G.; Fera, M.; Iannone, R.; Miranda, S. Supply chain risk assessment in the fashion retail industry: An analytic network process approach. Int. J. Appl. Eng. Res. 2017, 12, 140–154. [Google Scholar]
- Zhang, F.; Jiang, P.; Zhu, Q.; Cao, W. Modeling and analyzing of an enterprise collaboration network supported by service-oriented manufacturing. Proc. Inst. Mech. Eng. Part B J. Eng. Manuf. 2012, 226, 1579–1593. [Google Scholar] [CrossRef]
- Peng, C.; Meng, Y. Empirical study of manufacturing enterprise collaboration network: Formation and characteristics. Robot. Comput. Manuf. 2016, 42, 49–62. [Google Scholar] [CrossRef]
- Hu, J.W.; Gao, S.; Yan, J.W.; Lou, P.; Yin, Y. Manufacturing enterprise collaboration network: An empirical research and evolutionary model. Chin. Phys. B 2020, 29, 088901. [Google Scholar] [CrossRef]
- Jia, Y.; Li, J. Modeling and Characteristic Analysis of Manufacturing Enterprise Collaboration Network for Complex Product. IOP Conf. Ser. Mater. Sci. Eng. 2020, 790, 012108. [Google Scholar] [CrossRef]
- Durugbo, C. Collaborative networks: A systematic review and multi-level framework. Int. J. Prod. Res. 2015, 54, 3749–3776. [Google Scholar] [CrossRef]
- Andres, B.; Poler, R. Models, guidelines and tools for the integration of collaborative processes in non-hierarchical manufacturing networks: A review. Int. J. Comput. Integr. Manuf. 2016, 29, 166–201. [Google Scholar]
- Cai, X.; Qian, Y.; Bai, Q.; Liu, W. Exploration on the financing risks of enterprise supply chain using Back Propagation neural network. J. Comput. Appl. Math. 2019, 367, 112457. [Google Scholar] [CrossRef]
- Huang, X.; Liu, X.; Ren, Y. Enterprise credit risk evaluation based on neural network algorithm. Cogn. Syst. Res. 2018, 52, 317–324. [Google Scholar] [CrossRef]
- Gao, J. Performance evaluation of manufacturing collaborative logistics based on BP neural network and rough set. Neural Comput. Appl. 2020, 33, 739–754. [Google Scholar] [CrossRef]
- Daclin, N.; Chen, D.; Vallespir, B. Developing enterprise collaboration: A methodology to implement and improve interoperability. Enterp. Inf. Syst. 2014, 10, 467–504. [Google Scholar] [CrossRef]
- Abudureheman, A.; Nilupaer, A.; He, Y. Performance evaluation of enterprises’ innovation capacity based on fuzzy system model and convolutional neural network. J. Intell. Fuzzy Syst. 2020, 39, 1563–1571. [Google Scholar] [CrossRef]
- Li, W.; Wang, Y. Dynamic evaluation of logistics enterprise competitiveness based on machine learning and improved neural network. J. Ambient Intell. Humaniz. Comput. 2021, 12, 1–15. [Google Scholar] [CrossRef]
- Li, W.; Xu, G.; Xing, Q.; Lyu, M. Application of Improved AHP-BP Neural Network in CSR Performance Evaluation Model. Wirel. Pers. Commun. 2019, 111, 2215–2230. [Google Scholar] [CrossRef]
- Shu, Y.; Xu, G.-H. Multi-level Dynamic Fuzzy Evaluation and BP Neural Network Method for Performance Evaluation of Chinese Private Enterprises. Wirel. Pers. Commun. 2018, 102, 2715–2726. [Google Scholar] [CrossRef]
- Pei, J.; Liu, W. Evaluation of Chinese Enterprise Safety Production Resilience Based on a Combined Gray Relevancy and BP Neural Network Model. Sustainability 2019, 11, 4321. [Google Scholar] [CrossRef]
- Zhang, Y.; Hu, Z.; Ji, L.; Sun, N.; Lin, Y. Evaluation model of enterprise operation based on BP neural network optimization algorithm. J. Phys. Conf. Ser. 2020, 1570, 012084. [Google Scholar] [CrossRef]
- Awasthy, R.; Flint, S.; Jones, R.L.; Sankaranarayana, R. UICMM: A Maturity Model for University-Industry Collaboration. In Proceedings of the 2018 IEEE International Conference on Engineering, Technology and Innovation (ICE/ITMC), Stuttgart, Germany, 17–20 June 2018; pp. 1–8. [Google Scholar] [CrossRef]
- Ho, D.; Kumar, A.; Shiwakoti, N. Maturity model for supply chain collaboration: CMMI approach. In Proceedings of the 2016 IEEE International Conference on Industrial Engineering and Engineering Management (IEEM), Bali, Indonesia, 4–7 December 2016; pp. 845–849. [Google Scholar] [CrossRef]
- Schimpf, S.; Christo, N. Towards Strategic Action Planning: Using a Collaboration Maturity Model to Support International Co-Operation in Research and Innovation. In Proceedings of the 2018 IEEE International Conference on Engineering, Technology and Innovation (ICE/ITMC), Stuttgart, Germany, 17–20 June 2018; pp. 1–6. [Google Scholar] [CrossRef]
- Mahmood, K.; Lanz, M.; Toivonen, V.; Otto, T. A Performance Evaluation Concept for Production Systems in an SME Network. Procedia CIRP 2018, 72, 603–608. [Google Scholar] [CrossRef]
- Changjian, L.; Peng, H. Credit Risk Assessment for Rural Credit Cooperatives Based on Improved Neural Network. In Proceedings of the 2017 International Conference on Smart Grid and Electrical Automation (ICSGEA), Changsha, China, 27–28 May 2017; pp. 227–230. [Google Scholar] [CrossRef]
- Huang, L.; Tan, Y.; Guan, X. Evaluation of Cruise Ship Supply Logistics Service Providers with ANP-RBF. J. Adv. Transp. 2021, 2021, 6645946. [Google Scholar] [CrossRef]
First-Level Indicators | Second-Level Indicators | Third-Level Indicators |
---|---|---|
Collaboration performance | Enterprise finance | Input–output ratio (G1) |
Timely settlement rate (G2) | ||
Cost saving rate (G3) | ||
Cash conversion rate (G4) | ||
Enterprise business | Proportion of joint purchases to total purchases (G5) | |
Procurement timeliness (G6) | ||
Inventory turnover (G7) | ||
Synchronization of production plan (G8) | ||
Material supply flexibility (G9) | ||
On-time delivery (G10) | ||
Project construction flexibility (G11) | ||
Comprehensive project quality qualification rate(G12) | ||
The stability of supply and demand (G13) | ||
Output value of jointly developed products (G14) | ||
Timeliness of information delivery (G15) | ||
Degree of information sharing (G16) | ||
Enterprise strategy | Goal congruence (G17) | |
Corporate culture compatibility (G18) | ||
Degree of strategic goal matching (G19) | ||
Historical cooperation times (G20) | ||
Degree of corporate trust (G21) |
E1 to E6 | E1 to E9 | E1 to E11 | E2 to E3 | E2 to E5 | E3 to E9 | … | … | E25 to E15 | |
---|---|---|---|---|---|---|---|---|---|
G1 | 0.4988 | 0.0100 | 0.4214 | 0.8787 | 0.9532 | 0.5252 | … | … | 1.0000 |
G2 | 1.0000 | 0.6694 | 0.0100 | 0.7963 | 0.4686 | 0.2982 | … | … | 0.9151 |
G3 | 0.7722 | 0.8716 | 0.5572 | 1.0000 | 0.5973 | 0.9035 | … | … | 0.9694 |
G4 | 0.1829 | 0.9707 | 0.8469 | 0.2571 | 0.0100 | 0.8453 | … | … | 0.5112 |
G5 | 0.9751 | 0.7493 | 0.4631 | 0.7991 | 0.1266 | 0.4948 | … | … | 0.5849 |
G6 | 0.3793 | 0.6735 | 0.4810 | 0.9054 | 0.7606 | 1.0000 | … | … | 0.6656 |
G7 | 0.6774 | 0.4573 | 0.7871 | 0.3023 | 0.4479 | 0.2243 | … | … | 0.0100 |
G8 | 0.5226 | 0.0100 | 1.0000 | 0.4707 | 0.3411 | 0.8328 | … | … | 0.1339 |
… | … | … | … | … | … | … | … | … | … |
… | … | … | … | … | … | … | … | … | … |
G21 | 0.6381 | 0.5744 | 0.3273 | 0.3561 | 0.8465 | 0.3570 | … | … | 0.0100 |
Parameters | Meaning | Set Value |
---|---|---|
P | The value range of the input matrix | input(:,1:40) |
T | The value range of the output matrix | output(:,1:40) |
TFi | The transfer function of the i-th layer | trainsg |
BTF | The training function | trainlm |
epochs | Number of iterations over all training samples | 500 |
goal | Training accuracy | 1 × 10−3 |
The Numbers of Neurons in the Hidden Layer | Error (MSE) | Training Times (Epochs) |
---|---|---|
6 | 0.0009996023 | 180 |
7 | 0.0009992489 | 179 |
8 | 0.0009993312 | 170 |
9 | 0.0009992097 | 167 |
10 | 0.0009991308 | 160 |
11 | 0.0009990843 | 159 |
12 | 0.0009994574 | 154 |
13 | 0.0009997011 | 152 |
14 | 0.0009994827 | 151 |
15 | 0.0009998314 | 148 |
Experiment Number | Elman Neural Network | RBF Neural Network | Improved Elman Neural Network |
Relative Error | Relative Error | Relative Error | |
1 | 6.81% | 7.52% | 4.56% |
2 | 6.16% | 7.23% | 4.42% |
3 | 6.49% | 7.92% | 4.77% |
4 | 6.99% | 7.80% | 4.96% |
5 | 6.74% | 7.68% | 4.45% |
Average | 6.64% | 7.63% | 4.63% |
Collaborative Relationship | Expected Output | Elman Neural Network [23] | RBF Neural Network [24] | Improved Elman Neural Network | |||
Predicted Value | Relative Error | Predicted Value | Relative Error | Predicted Value | Relative Error | ||
E1 to E6 | 75 | 69.613 | 7.18% | 80.302 | 7.07% | 78.273 | 4.36% |
E7 to E5 | 69 | 64.118 | 7.08% | 64.317 | 6.79% | 65.701 | 4.78% |
E9 to E1 | 57 | 61.127 | 7.24% | 53.163 | 6.73% | 58.454 | 2.55% |
E8 to E4 | 85 | 89.97 | 5.85% | 92.133 | 8.39% | 80.844 | 4.89% |
E5 to E8 | 65 | 60.523 | 6.89% | 69.732 | 7.28% | 62.663 | 3.60% |
E6 to E7 | 74 | 68.674 | 7.20% | 69.996 | 5.41% | 77.966 | 5.36% |
E3 to E2 | 73 | 67.636 | 7.35% | 78.462 | 7.48% | 69.204 | 5.20% |
E4 to E9 | 78 | 74.262 | 4.79% | 72.575 | 6.96% | 74.887 | 3.99% |
E2 to E5 | 87 | 90.299 | 3.79% | 81.015 | 6.88% | 88.991 | 2.29% |
E7 to E1 | 64 | 61.361 | 4.12% | 70.252 | 9.77% | 60.454 | 5.54% |
Average | 6.15% | 7.28% | 4.26% |
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. |
© 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Zhang, J.; Ding, X.; Hu, D.; Guo, B.; Jiang, Y. Performance Evaluation of Enterprise Collaboration Based on an Improved Elman Neural Network and AHP-EW. Appl. Sci. 2022, 12, 5941. https://doi.org/10.3390/app12125941
Zhang J, Ding X, Hu D, Guo B, Jiang Y. Performance Evaluation of Enterprise Collaboration Based on an Improved Elman Neural Network and AHP-EW. Applied Sciences. 2022; 12(12):5941. https://doi.org/10.3390/app12125941
Chicago/Turabian StyleZhang, Jianxiong, Xuefeng Ding, Dasha Hu, Bing Guo, and Yuming Jiang. 2022. "Performance Evaluation of Enterprise Collaboration Based on an Improved Elman Neural Network and AHP-EW" Applied Sciences 12, no. 12: 5941. https://doi.org/10.3390/app12125941
APA StyleZhang, J., Ding, X., Hu, D., Guo, B., & Jiang, Y. (2022). Performance Evaluation of Enterprise Collaboration Based on an Improved Elman Neural Network and AHP-EW. Applied Sciences, 12(12), 5941. https://doi.org/10.3390/app12125941