Deep Reinforcement Learning and Auto-Differential Evolution Co-Guided Coal Washing

IF 1.3 4区 数学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Mingcheng Zuo
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引用次数: 0

Abstract

Background. Coal washing is a complicated process and difficult to control, which has many controlling parameters with strong coupling relationship. It is still a challenge to realize the self-perception, self-adjustment, and self-evaluation of coal washing machine, improve the quality of coal washing, ensure production safety, and reduce labor cost. Methods. Through the intelligent transformation of jig, this paper proposes an intelligent washing method with cooperated deep reinforcement learning and evolutionary computation. First, it designs a fault warning method based on statistical analysis, helping to recover the normal running state of jig with manual maintenance. Then, it constructs a regulation strategy generation method with deep reinforcement learning supported by the fusion of artificial experience and historical data. Last, for the lack of monitoring data caused by poor communication quality and environment, the regulation strategy prediction method with evolutionary computation and surrogate model is proposed. Results. In practice, this method shows accurate fault warning accuracy and rapid cleaned coal ash adjustment response ability. Conclusions. This shows that the method proposed in this paper is of great significance for intelligent washing and can better cope with the special situation when the washing equipment sensing data are missing.
深度强化学习和自差分进化协同引导洗煤
背景。洗煤是一个复杂的过程,控制难度大,控制参数多,耦合关系强。如何实现洗煤机的自我感知、自我调整、自我评价,提高洗煤质量,确保生产安全,降低人工成本,仍是一个难题。方法。通过对夹具的智能化改造,本文提出了一种深度强化学习与进化计算协同的智能洗选方法。首先,它设计了一种基于统计分析的故障预警方法,有助于通过人工维护恢复跳汰机的正常运行状态。然后,在人工经验和历史数据的融合支持下,利用深度强化学习构建了一种调节策略生成方法。最后,针对通信质量和环境不佳导致的监控数据缺乏问题,提出了进化计算和代用模型的调节策略预测方法。结果。在实践中,该方法表现出了准确的故障预警精度和快速的洁净煤灰调节响应能力。结论。本文提出的方法对智能洗选具有重要意义,能更好地应对洗选设备传感数据缺失的特殊情况。
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来源期刊
Discrete Dynamics in Nature and Society
Discrete Dynamics in Nature and Society 综合性期刊-数学跨学科应用
CiteScore
3.00
自引率
0.00%
发文量
598
审稿时长
3 months
期刊介绍: The main objective of Discrete Dynamics in Nature and Society is to foster links between basic and applied research relating to discrete dynamics of complex systems encountered in the natural and social sciences. The journal intends to stimulate publications directed to the analyses of computer generated solutions and chaotic in particular, correctness of numerical procedures, chaos synchronization and control, discrete optimization methods among other related topics. The journal provides a channel of communication between scientists and practitioners working in the field of complex systems analysis and will stimulate the development and use of discrete dynamical approach.
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