1. Introduction
The cement industry involves energy-intensive processes such as clinker rotary kilns and clinker grate coolers. Clinker is the fundamental component of the cement, which is produced through a baking process in a kiln and a subsequent cooling process in a cooler, and large amounts of thermal and electric energy are required [
1]. In many cement industries, large energy efficiency improvement margins can be observed due to dated plant hardware and/or the not-optimized conduction of the subprocesses. In the last decade, Green Economy principles have gained wide acceptance: the cement industry has been involved in this transformation process and different studies were conducted in this context, elevating decarbonization as a topic of primary importance [
2]. In this context, carbon dioxide (CO
2) and pollutant emission reduction represents a significant objective in all cement industry subprocesses [
3,
4]. Clinker rotary kilns and grate coolers play an important role in terms of energy consumption and emissions, due to the huge amount of thermal and electric energy required [
1].
Data selection, acquisition, storage and analysis retain a primary role in the design of decision support systems and expert systems [
5] able to monitor, control and optimize the performance in the cement industry: Industry 4.0 technologies and digitalization can represent a strategic driver in this field [
2,
6]. Furthermore, for the mitigation of pollution, carbon dioxide (CO
2) emissions and plant conduction costs, Advanced Process Control (APC) systems can be considered [
7]. APC systems usually are located at the second level of the automation hierarchy [
8], can be included in edge computing or cloud computing architectures [
9] and are able to optimize in real-time the behavior of processes while taking into account different specifications of the critical process variables [
10]. In addition, monitoring and high-level optimization solutions can play an important role with respect to other objectives, e.g., the accurate observation of critical process variables and the optimization of plant assets at a global level.
Different approaches for the monitoring, high-level optimization and APC of cement industry clinker rotary kilns and grate coolers have been proposed by researchers, engineers and practitioners. Monitoring and high-level optimization solutions are proposed in [
11,
12,
13,
14,
15,
16]. In [
11], a review of the studies on emissions caused by cement complexes is reported, focusing on the treatment and on the monitoring of the pollution emissions. Modelization is here performed in Python and the objective is to assess how smart monitoring and modeling techniques can help on the road toward high-efficiency cement production and eco-friendly procedures. In [
12], a process model of a precalciner kiln system in the cement industry using Aspen Plus software is proposed to simulate the effects of five alternative fuels on pollutant emissions and energy performance. The model is developed on the basis of the energy and mass balance of the system and is validated using data from a reference cement plant. A model for a cost-optimal cement plant that fulfils carbon limitations without compromising product specifications is designed in [
13], focusing on three mitigation methods for cement manufacturing: co-processing, kiln system improvements, and carbon capture. The model was used for the formulation of a mixed integer linear programming problem. In [
14], the performance of a grate cooler in a cement manufacturing industry in Nigeria has been examined using the mass and heat balance methodology. The performance evaluation parameters considered are clinker temperature, cooler loss and efficiency. This study revealed that the grate cooler efficiency estimated through heat consumption balances conformed to the designed standard. In [
15], the nitrogen oxides (NO
x) control problem is tackled. A data-driven model for the NO
x process variable is achieved and a real-time optimization problem is formulated and solved through a particle swarm optimization algorithm. In [
16], a multi-objective formulation based on entropy generation is designed for clinker layer thickness control. A genetic algorithm is employed for the solution of the optimization problem, providing the minimum energy consumption of cooling fans.
The monitoring and high-level optimization algorithms reported in the previous paragraph are not in charge of the management of the real-time operation of the plants. In this context, APC systems can play a key role in rotary kiln and grate cooler control and optimization. APC system solutions for cement kilns are proposed in [
17,
18,
19,
20,
21,
22,
23,
24,
25,
26,
27,
28], while APC system solutions for coolers are proposed in [
29,
30,
31,
32,
33,
34,
35,
36].
With regard to kilns, in [
17], mathematical models are exploited for the design of a conventional control system in order to control several variables in real-time. Proportional-Integral (PI) and Proportional-Integral-Derivative (PID) controllers are exploited, and MATLAB [
37] software is used for simulation. In [
18], an optimal control solution is proposed based on the Model Predictive Control (MPC) strategy: the weights of the controller are tuned using genetic algorithms and an interactive decision tree, taking into account the minimization of the tracking error and of the overall energy utilization; the proposed approach is validated through simulation scenarios. In [
19], the clinker burner process is controlled and optimized through a first principles model. An MPC strategy is used to stabilize a temperature profile along the rotary kiln, while moving horizon estimation is used for the online estimation of selected model parameters and unmeasured states; the proposed control system was commissioned on a real plant. In [
20], hybrid system theory, thermal regulation, and the least squares method are combined for the design of a simulation and control platform of rotary kiln burning zone temperature. In [
21], an automatic control method of the burning temperature based on multi-control strategy combinatorial control technology is proposed. A set of combinatorial rules are formulated based on human operation knowledge and experience, and the proposed method was tested on a real plant. In [
22], a data-driven autoregressive moving average model is established to predict the temperature of the flue gas chamber at the kiln tail. The model identification was based on standard goodness-of-fit metrics. The obtained model was used for the design of an MPC strategy that was tested through simulations. The control of the temperature of the burning zone of an industrial cement rotary kiln is addressed in [
23]. A model with time delay is identified from experimental data and is used for the synthesis of different controllers, i.e., a standard PI controller, a PI controller with a Smith predictor scheme and a fractional-order controller with a Smith predictor scheme. The developed controllers are tested through simulations. In [
24], a generalized predictive controller for the control of the clinkerization temperature of a cement rotary kiln is proposed. Real data are used for model identification and simulation scenarios are exploited to compare the developed controller with a PID controller. A state feedback Smith predictor controller for the temperature control in a precalciner of a cement rotary kiln is proposed in [
25]. A dynamic model of the process is obtained by exploiting real industrial data; simulations are used for the comparison between the designed controller with a standard PID controller. In [
26,
27,
28], a two-layer MPC strategy and slack variables formulation are used by the authors for the control and the optimization of a clinker rotary kiln without a precalciner. Cooperation policies between a Linear Programming (LP)-based optimizer (at the upper layer) and a Quadratic Programming (QP)-based optimizer (at the lower layer) are exploited. Different simulations based on constraints variation and on disturbances rejection allowed for the testing of the developed controllers, and finally, field implementation confirmed the validity of the proposed control approaches for clinker rotary kilns without precalciners.
With regard to clinker coolers, an optimization method for the performance of PID controllers is proposed in [
29]. A process with a fixed grate and two moving ones is considered. A process model between the speed of the moving grate and the pressures of the static and of the moving grates is identified by industrial data. The process model is used for tuning and simulation purposes. The design of an internal model control-based PID controller for maintaining the under grate pressure of a grate cooler used in cement plants is presented in [
30], with the goal of achieving target tracking for the considered controlled variable; the proposed approach is tested through simulations. In [
31], the objectives of target tracking the chamber pressure of the grate cooler are analyzed while respecting a minimum constraint for the secondary air. A PI controller is designed based on a switching mechanism; the control strategy was tested in practical applications.
In [
32], a multi-mode intelligent control method is proposed for the optimization of a grate cooler: variable integral PID control, fuzzy control, bang-bang control and expert control techniques are suitably combined and tested on industrial applications. In [
33], the grate down pressure control and stabilization problems are addressed through an optimizer based on a least squares support vector machine; the proposed approach is tested through simulations. In [
34], a dynamic matrix control strategy is exploited for grate cooler control, based on a prediction model obtained through the least-squares method; the proposed approach is tested through simulations. In [
35], the expert system and fuzzy control system are applied to manipulate the grate speed in order to control the chamber pressure; the proposed approach is tested through field application. In [
36], a back propagation algorithm in neural network modeling is applied to predict the grate chamber pressure and a fuzzy control technique is used; the proposed approach is tested through field application.
The present paper proposes the design and the field implementation of APC systems for the clinker rotary kiln and grate cooler of the cement industry. The paper aims to provide holistic knobs and solutions for the assessment of APC methods in the cement industry. The present paper extends the contents reported in [
38], providing additional details and insights into the different phases of the developed project and emphasizing the provided novelties. To the best of the authors’ knowledge, in the literature of APC systems for clinker rotary kilns and grate coolers, the following technical aspects have not been explored in depth:
The procedural steps for qualified plant survey and data selection, acquisition, storage and analysis phases play a fundamental role before beginning an APC project for cement plants. These phases have not been thoroughly detailed in the literature;
An overall assessment of the Key Performance Indicators (KPIs) to be computed and exploited for the evaluation of the performance provided by an APC system on a grate cooler has not been thoroughly detailed in the literature.
In addition to the mentioned technical merits, the following innovative scientific contributions, not present in the literature, characterize the proposed paper:
A procedure for the inclusion of the kiln filling degree in the control matrix of an APC system while maintaining a linear formulation for the process variables’ constraints;
An architecture that allows the cooperation between different APC systems;
An APC system scheme capable of taking into account bad data detection and local control loop malfunctions;
A two-layer MPC scheme with a cooperation policy between the layers that can be characterized by LP or QP formulations. This feature allows the adaptation of an APC scheme to subprocesses with different control specifications;
A method for the exploitation of sensor/analyzer redundancy in an APC system. This feature allows us to ensure a reliable control in all operating conditions, including tailored plant operations (e.g., cyclone cleaning);
The definition of different priority rankings for controlled variable constraint relaxations based on the current operating conditions.
The control and energy-saving results achieved with the field implementation confirmed the validity of the proposed approach. To the best of the authors’ knowledge, projects that include implementation in the real process and are designed as lasting control applications and not as temporary tests are not widespread. The field application of an APC system designed and tested through virtual environment simulations requires significant reliability and robustness features in order to bridge the gap between simulations and field application.
The paper is organized as follows:
Section 2 reports the material and methods, providing: the process description, the control specifications, and the project definition. In addition, some details on plant survey and on data selection, acquisition, storage, and analysis are reported. Finally, modelization, model mismatch compensation, APC design, and software details are described.
Section 3 reports the results and discussion, focusing on data analysis, modelization, virtual environment simulations and field results. The conclusions are summarized in
Section 4, together with some ideas for future work.