Total optimization of smart community using sequence-based deterministic initialization and k-means based initial searching points generation

M. Sato, Y. Fukuyama
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引用次数: 2

Abstract

This paper proposes total optimization of smart community (SC) using sequence-based deterministic initialization and k-means based initial searching points generation. In this paper, energy supply models such as electric power utility, natural gas utility, drinking water plant, and waste water treatment plant, and energy consumption models such as industry, building, residence, and railroad are utilized. Using the SC model, energy costs, actual electric power at peak load hours, and the amount of CO2 emission of the whole SC is minimized. Differential Evolutionary Particle Swarm Optimization (DEEPSO) is applied as the optimization technique with the proposed initial searching points generation method based on the sequence-based deterministic initialization and k-means. The proposed method is applied to a model of Toyama city, which is a moderately-sized city in Japan. Optimal operation by the proposed method is compared with that by an initial searching points generation method using pseudo-random number generator (PRNG) and the proposed method.
基于序列的确定性初始化和基于k-means的初始搜索点生成的智能社区总体优化
提出了基于序列的确定性初始化和基于k-means初始搜索点生成的智能社区总体优化算法。本文采用了电力公用事业、天然气公用事业、饮用水厂、污水处理厂等能源供应模式和工业、建筑、住宅、铁路等能源消耗模式。使用SC模型,整个SC的能源成本、高峰负荷时的实际电力以及二氧化碳排放量都是最小的。将差分进化粒子群算法(DEEPSO)作为优化技术,提出了基于序列确定性初始化和k均值的初始搜索点生成方法。将该方法应用于日本中等规模城市富山市的一个模型。将所提方法与基于伪随机数生成器(PRNG)的初始搜索点生成方法和所提方法的最优操作进行了比较。
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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