首页> 外文期刊>International Journal of Electrical Power & Energy Systems >Effective bulk energy consumption control and management for power utilities using artificial intelligence techniques under conventional and renewable energy resources
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Effective bulk energy consumption control and management for power utilities using artificial intelligence techniques under conventional and renewable energy resources

机译:在常规和可再生能源资源下使用人工智能技术对电力公司进行有效的大宗能耗控制和管理

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摘要

Increasing sustainability demands initiate estimating various design and control opportunities for classifying energy-efficient plan ever more significant. These conditions demand simulation algorithms which are not only fast, but also accurate. Artificial intelligence (AI) enables efficient mimicry of bulk energy consumption control while producing results much faster than data-mining and machine learning models. This study proposes two AI based approaches for utilities bulk energy consumption prediction, control and management. Two different zones actual environmental and energy consumption data are obtained for input feature selection and modeling analysis. Each zone is categorized into five features parameter selection (PS) states. Each PS state is further divided into four different hidden neurons (HD) and hidden layers of the model's network. The forecasting duration is based on 1-month and 1-year ahead intervals for medium-term (MT) and long-term (LT) respectively. Further the current proposed model's performance is compared with three existing models. One of the promising findings in this research is that substantial improvement in prediction accuracy applying features extracted by PS-3 and PS-5. Results show that AI models are powerful in solving complex and nonlinear patterns of raw data. This study renders optimal decisions can be projected while utilities energy supply strategy & control, capacity expansion, capital investment research market management, revenue analysis and future load requirement forecasting.
机译:可持续性需求的增加引发了对各种设计和控制机会的估计,从而对节能计划进行分类变得更加重要。这些条件要求仿真算法不仅快速而且准确。与数据挖掘和机器学习模型相比,人工智能(AI)可以有效地模仿大量能源消耗控制,同时产生结果的速度要快得多。这项研究提出了两种基于AI的方法来进行公用事业的大宗能耗预测,控制和管理。获得两个不同区域的实际环境和能耗数据,以进行输入特征选择和建模分析。每个区域都分为五个特征参数选择(PS)状态。每个PS状态进一步分为模型网络的四个不同的隐藏神经元(HD)和隐藏层。预测持续时间分别基于中期(MT)和长期(LT)的提前1个月和1年。此外,将当前提出的模型的性能与三个现有模型进行比较。这项研究中有希望的发现之一是,利用PS-3和PS-5提取的特征可以大大提高预测精度。结果表明,AI模型在解决原始数据的复杂和非线性模式方面功能强大。这项研究使得最佳决策可以在公用事业能源供应战略与控制,容量扩展,资本投资研究市场管理,收入分析以及未来负荷需求预测的同时进行预测。

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