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Multi-Energy Scheduling of an Industrial Integrated Energy System by Reinforcement Learning-Based Differential Evolution

机译:基于加固基于学习的差分演化的工业综合能源系统的多能量调度

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摘要

The Industrial Internet of Things (IIoT) is one of the main catalysts towards the realization of the Industry 4.0 paradigm, thus it is regarded as an essential element in future industrial systems - which can assist in reducing energy consumption and in enhancing product life-cycle management. In this study, an industrial multi-energy scheduling framework (IMSF) is proposed, with the aim of optimizing the usage of renewable energy and reducing the energy costs. The proposed method addresses the management of multi-energy flows in industrial integrated energy systems - incorporating multi-energy storage, renewable energy generation, energy conversion, and energy trading in a synchronous manner. The method considers the typical energy load of the industrial users, the energy price of the national grid and the trading platform, and the trade-off between investment costs and benefits from the various sub-systems. As this results in a complex system of systems, an artificial intelligence method is proposed to treat the problem, using reinforcement learning based differential evolution (RLDE), that can determine the optimal mutation strategy and associated parameters in an adaptive way. Case studies on real-world data evidence the effectiveness of the IMSF and the RLDE algorithm in reducing the energy costs in industrial environments.
机译:工业物联网(IIOT)是实现业界4.0范式的主要催化剂之一,因此它被视为未来的工业系统中的基本要素 - 这可以帮助减少能源消耗和增强产品生命周期管理。在本研究中,提出了一种工业的多能量调度框架(IMSF),目的是优化可再生能源的使用并降低能源成本。该方法解决了工业集成能源系统中的多能量流量的管理 - 以同步方式合并多能量存储,可再生能源,能量转换和能量交易。该方法考虑了工业用户的典型能量负荷,国家电网和交易平台的能源价格,以及各种子系统的投资成本与福利之间的权衡。正如该结果在系统的复杂系统中,建议使用基于加强学习的差分演进(RLDE)来处理问题,以便以自适应方式确定最佳突变策略和相关参数。实际数据证据案例研究IMSF和RLDE算法在降低工业环境中的能源成本时的有效性。

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