基于元搜索优化的输电线路结冰预测神经网络

IF 3.8 2区 工程技术 Q1 ENGINEERING, CIVIL
Reda Snaiki , Abdeslam Jamali , Ahmed Rahem , Mehdi Shabani , Brian L. Barjenbruch
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引用次数: 0

摘要

架空输电线路系统上的积冰是造成停电的主要原因,在北方地区会导致巨大的经济损失。因此,准确、快速地预测输电线路上的积冰对确保电网安全运行至关重要。本研究介绍了一种预测冰液比(ILR)的机器学习方法,冰液比(ILR)是评估覆冰效率的重要参数。虽然估算冰液比(ILR)对运行预测至关重要,但许多现有的增冰模型都不具备这一功能。采用随机梯度下降和各种元启发式优化器(特别是粒子群优化器、灰狼优化器、鲸鱼优化器和粘菌优化器)训练的前馈神经网络(FFNN)来预测每小时的ILR。训练和测试 FFNN 模型所需的环境数据来自自动地表观测系统(ASOS)。为了确定影响最大的输入参数,使用索博尔指数(通过多项式混沌展开的系数进行评估)进行了全局敏感性分析。结果表明,只有四个输入参数对响应差异有显著影响:降水、温度、露点温度和风速。此外,使用元启发式优化器训练的 FFNN 模型优于随机梯度下降方法。利用预测的 ILR,可以很容易地计算出积冰量,即 ILR 与液态降水深度的乘积。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A metaheuristic-optimization-based neural network for icing prediction on transmission lines

Ice accretion on overhead transmission line systems is a leading cause of power outages and can lead to substantial economic losses in northern regions. Therefore, accurately and rapidly predicting ice accretion on power lines is crucial for ensuring the safe operation of the power grid. This study introduces a machine learning method for predicting the ice-to-liquid ratio (ILR), an important parameter for assessing ice accretion efficiency. While estimating ILR is vital for operational forecasting, many existing ice accretion models do not include this capability. A feedforward neural network (FFNN) trained with stochastic gradient descent and various metaheuristic optimizers - specifically particle swarm optimization, grey wolf optimizer, whale optimizer, and slime mold optimizer - is employed to forecast hourly ILR. Environmental data required for training and testing the FFNN model were obtained from the Automated Surface Observing System (ASOS). A global sensitivity analysis using the Sobol index, evaluated via the coefficients of a polynomial chaos expansion, was conducted to identify the most influential input parameters. The results indicate that only four input parameters significantly contribute to the variance in the response: precipitation, temperature, dew point temperature, and wind speed. Furthermore, the FFNN model trained with metaheuristic optimizers outperformed the stochastic gradient descent approach. With the predicted ILR, ice accumulation can be easily calculated as the product of ILR and the amount of liquid precipitation depth.

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来源期刊
Cold Regions Science and Technology
Cold Regions Science and Technology 工程技术-地球科学综合
CiteScore
7.40
自引率
12.20%
发文量
209
审稿时长
4.9 months
期刊介绍: Cold Regions Science and Technology is an international journal dealing with the science and technical problems of cold environments in both the polar regions and more temperate locations. It includes fundamental aspects of cryospheric sciences which have applications for cold regions problems as well as engineering topics which relate to the cryosphere. Emphasis is given to applied science with broad coverage of the physical and mechanical aspects of ice (including glaciers and sea ice), snow and snow avalanches, ice-water systems, ice-bonded soils and permafrost. Relevant aspects of Earth science, materials science, offshore and river ice engineering are also of primary interest. These include icing of ships and structures as well as trafficability in cold environments. Technological advances for cold regions in research, development, and engineering practice are relevant to the journal. Theoretical papers must include a detailed discussion of the potential application of the theory to address cold regions problems. The journal serves a wide range of specialists, providing a medium for interdisciplinary communication and a convenient source of reference.
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