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A Comparative of Neural Network with Metaheuristics for Electricity Consumption Forecast Modelling

机译:神经网络与电力消费预测模拟中的血流训练的比较

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This paper attempted to study the efficiency of Artificial Neural Network (ANN) with metaheuristic algorithms for electricity consumption modeling in Thailand. The objective was to compare the study between ANN with Backpropagation algorithm (ANN-BP) and ANN combined with different metaheuristic algorithms: ANN with Harmony Search (ANN-HS), ANN with Artificial Bee Colony (ANN-ABC), ANN with Teaching-Learning-Based Optimization (ANN-TLBO) and ANN with Jaya Algorithms (ANN-JA) models. The models selected Population, Gross Domestic Product (GDP), Imports of goods and services, Exports of goods and services as inputs. The experiment results showed that the ANN-TLBO model had optimal efficiency, while ANN-JA was one of the competitive metaheuristic algorithms that could be implemented to modelling for use in future studies.
机译:本文试图研究人工神经网络(ANN)与泰国电消耗建模的成分型算法的效率。该目标是将ANN与BackPropagation算法(Ann-BP)的研究进行比较,并与不同的成群质算法相结合:ANN与Harmony Search(Ann-HS),ANN与人工蜂殖民地(ANN-ABC),ANN与教学 - 基于学习的优化(Ann-TLBO)和Jaya算法(Ann-JA)模型的ANN。型号选定人口,国内生产总值(GDP),商品和服务进口,商品和服务的出口作为投入。实验结果表明,Ann-TLBO模型具有最佳效率,而Ann-Ja是可以实施以在未来研究中使用的建模的竞争成分识别算法之一。

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