Research on optimization of energy consumption monitoring point layout on user side

Jiajian Zheng, Guo-qiang Han, Shouyong Yang, Shujuan Tan
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引用次数: 1

Abstract

In industrial production, the consumption of electric energy is very large. Most enterprises have the problem of repeated monitoring of energy consumption, so the optimization of energy consumption monitoring points has its significance. Firstly, the monitoring points were selected according to the energy efficiency fluctuation coefficient. Then, according to the electrical wiring mode, the proposed monitoring points were optimized for the second time by using the Quantum-behaved Particle Swarm Optimization (QPSO). Finally, the concept of maximum redundancy is put forward to screen and optimize the proposed monitoring points, and the experiment is carried out in an enterprise. The results show that after the first two steps of optimization, the number of monitoring points can be significantly decreased. After the third step of optimization, a more reasonable scheme can be selected under the condition of the same number of monitoring points.
用户侧能耗监测点布置优化研究
在工业生产中,电能的消耗量非常大。大多数企业都存在能耗重复监测的问题,因此对能耗监测点进行优化具有重要意义。首先,根据能源效率波动系数选择监测点;然后,根据电气布线方式,利用量子粒子群算法(QPSO)对建议的监测点进行第二次优化。最后,提出了最大冗余的概念来筛选和优化所提出的监测点,并在企业中进行了实验。结果表明,经过前两步优化后,监测点数量可以明显减少。经过第三步优化,在监测点数量相同的情况下,可以选择更合理的方案。
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