Smart Grid Energy Management System for Industrial Applications

H. Omondi, P. Musau, A. Nyete
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Abstract

Energy is one of the top operating expenses in industries. Following the increased adoption of smart grids in recent years, industries can leverage on its capabilities to design effective energy management schemes for competitive advantage. This paper addresses the challenge of energy management in industries by incorporating the aspects of a smart grid in designing an energy management system (EMS) where demand side management (DSM) is utilized to enable users control their energy usage and minimize costs. A forecasting model for electricity prices and demand is developed using Long Short Term Memory (LSTM) - Recurrent Neural Network (RNN). The predicted prices are used in load scheduling to realize potential energy cost savings. The nonpriority loads are scheduled to leverage on low electricity prices during off peak times. The effectiveness of the designed energy management strategy is tested using an IEEE 30 bus system. A suitable operation schedule with committed units for each hour is given for one sample day. Using the test system with 20 loads yielded an annual energy cost saving of $2,961,169.20 and a payback period (PBP) of 4.39 years. Quantifying both the energy and non-energy benefits of investing in an EMS justifies its high investment cost. Long term use of an industrial EMS is likely to yield huge energy and cost savings.
工业应用智能电网能源管理系统
能源是工业中最大的运营费用之一。随着近年来智能电网的普及,工业可以利用其能力来设计有效的能源管理方案,以获得竞争优势。本文通过在设计能源管理系统(EMS)时结合智能电网的各个方面来解决工业能源管理的挑战,其中需求侧管理(DSM)被利用来使用户控制他们的能源使用并最大限度地降低成本。利用长短期记忆(LSTM) -递归神经网络(RNN)建立了电力价格和需求的预测模型。将预测价格用于负荷调度,以实现潜在的能源成本节约。非优先级负载被安排在非高峰时段利用低电价。利用IEEE 30总线系统测试了所设计的能量管理策略的有效性。在一个样本日,给出了一个合适的操作时间表,每小时有承诺的单位。使用20个负载的测试系统,每年节省能源成本2,961,169.20美元,投资回收期(PBP)为4.39年。量化投资EMS的能源和非能源效益证明了其高投资成本是合理的。长期使用工业EMS可能会产生巨大的能源和成本节约。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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