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A Smart Voltage Optimization Approach for Industrial Load Demand Response

机译:工业负载需求响应的智能电压优化方法

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This paper proposes a generic and comprehensive Voltage Optimization (VO) strategy for energy savings by industrial customers, to lower operating expenses through the implementation of an optimal process-based Demand Response (DR) program without affecting the real-time manufacturing process. This strategy takes into account the complex nature of industrial loads and their unique set of operating constraints, to reduce energy demand for industrial customers by means of varying the voltage at the utility service entrance to the plant. The proposed approach utilizes a Neural Network (NN) model of the industrial load, trained using historical operating data, to estimate the real power consumption of the load, based on the bus voltage and overall plant process. The NN load model is incorporated into the proposed VO model, whose objective is the minimization of the energy drawn from the substation and the number of switching operations of Load Tap Changers (LTC). The proposed VO framework is tested on a real plant model developed using actual measured data. The results demonstrate that the proposed technique can be successfully implemented by industrial customers and plant operators to enhance energy savings compared to Conservation Voltage Reduction (CVR) approaches, and also as a DR strategy that effectively manages the dependence of industrial loads on time-sensitive and critical manufacturing processes.
机译:本文提出了一种通用且全面的电压优化(VO)策略,以节省工业客户的能源,从而通过实施基于过程的最佳需求响应(DR)程序来降低运营成本,而不会影响实时制造过程。该策略考虑到了工业负载的复杂性及其独特的运行限制,从而通过改变电厂公用服务入口处的电压来降低工业客户的能源需求。所提出的方法利用工业负载的神经网络(NN)模型(使用历史操作数据进行训练),基于总线电压和整个工厂过程估算负载的实际功耗。 NN负载模型被合并到建议的VO模型中,其目标是最小化变电站的能量消耗以及有载分接开关(LTC)的开关操作次数。在使用实际测量数据开发的真实工厂模型上测试了建议的VO框架。结果表明,与节能降压(CVR)方法相比,工业客户和工厂运营商可以成功地实施所提出的技术,以提高节能效果,并且还可以作为一种可有效管理工业负载对时间敏感和关键制造工艺。

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