趋势周期时间序列的混合线性回归预测

IF 2 4区 计算机科学 Q2 Computer Science Intelligent Automation and Soft Computing Pub Date : 2022-01-01 DOI:10.32604/iasc.2022.022231
N. Ashwini, V. Nagaveni, M. Kumar Singh
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引用次数: 0

摘要

利用基于函数映射的原理,通过精心设计的人工神经网络模型,可以很好地对具有单模式特征的时间序列信号进行预测。但是当时间序列中混合了不同的模式特征时,其性能会有很大的下降。当需要预测远时间样本时,难度会进一步增加。在几种可能的混合模式中,趋势周期时间序列具有其重要性,因为它出现在许多实际应用中,如发电、燃料消耗和汽车销售。由于模式的混合特征,神经模型在泛化学习方面受到很大影响,结果在测试数据上表现不佳。为了克服这一问题,本文采用了一种基于分解的方法来分离趋势模式和循环模式的组件模式,并开发了用于预测单个数据模式的专用模型。采用线性回归模型对趋势数据模式的线性特征进行建模,采用自适应径向基函数神经网络对循环模式的非线性行为进行建模。最后的预测结果被认为是各个模型结果的线性组合。在径向基函数神经网络中,高斯函数因其在函数映射中广泛而有效的适用性而被认为是核函数。通过提供基函数的扩散和中心的自适应值以及权值,神经模型的性能得到了很大的提高。在本文中,考虑了两种不同的应用预测的电力需求的领域由个人住宅和月为单位的年度发电量。基于房屋特征参数,考虑了房屋的用电需求,具有中等复杂性的函数映射问题,而在另一种情况下,仅根据前一年的观测数据,按月预测一年的总发电量,具有趋势和循环模式的混合行为。在住宅电力需求预测中,基于自适应核的径向基函数比静态核径向基函数和多层感知器神经网络表现出了令人满意的性能。神经模型与线性回归相结合的方法对混合模式显示出非常有效的结果,而单独的神经模型则无法做到这一点。本作品采用知识共享署名4.0国际许可协议,允许在任何媒体上不受限制地使用、分发和复制,前提是正确引用原创作品。智能自动化与软计算DOI:10.32604/iasc.2022.022231
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Forecasting of Trend-Cycle Time Series Using Hybrid Model Linear Regression
Forecasting for a time series signal carrying single pattern characteristics can be done properly using function mapping-based principle by a welldesigned artificial neural network model. But the performances degraded very much when time series carried the mixture of different patterns characteristics. The level of difficulty increases further when there is a need to predict far time samples. Among several possible mixtures of patterns, the trend-cycle time series is having its importance because of its occurrence in many real-life applications like in electric power generation, fuel consumption and automobile sales. Over the mixed characteristics of patterns, a neural model, suffered heavily in getting generalized learning, in result poor performances appeared over test data. To overcome this issue in this work, a decomposition-based approach has been applied to separate the component patterns of trend and cyclic patterns, and a dedicated model has been developed for predicting the individual data patterns. The linear characteristic of the trend data pattern has been modeled through a linear regression model while the nonlinearity behavior of cyclic pattern has been model by an adaptive radial basis function neural network. The final predicted outcome has been considered as the linear combination of individual model outcomes. The Gaussian function has been considered as the kernel function in the radial basis function neural network because of its wider and efficient applicability in function mapping. The performance of the neural model has been improved very much by providing the adaptive value of spreads and centers of basis function along with weights values. In this paper, two different applications of forecasting in the area of electric power demand by the individual house and month-wise annual power generation have been considered. Based on house characteristics parameters, the power demanded by a house have been considered which carried a moderate complexity of function mapping problem while in another case, total power generation needed to be predicted on the monthly basis for a year from just the previous year observation, which carried the mixed behavior of trend and cyclic pattern. For house power demand forecasting the adaptive kernel-based radial basis function has shown very satisfactory performances and much better against static kernel radial basis function and multilayer perceptron neural network. The integrated approach of neural model and linear regression has shown very efficient outcomes for the mixture pattern while individual neural models were failed to do so. This work is licensed under a Creative Commons Attribution 4.0 International License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. Intelligent Automation & Soft Computing DOI:10.32604/iasc.2022.022231 Article ech T Press Science
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来源期刊
Intelligent Automation and Soft Computing
Intelligent Automation and Soft Computing 工程技术-计算机:人工智能
CiteScore
3.50
自引率
10.00%
发文量
429
审稿时长
10.8 months
期刊介绍: An International Journal seeks to provide a common forum for the dissemination of accurate results about the world of intelligent automation, artificial intelligence, computer science, control, intelligent data science, modeling and systems engineering. It is intended that the articles published in the journal will encompass both the short and the long term effects of soft computing and other related fields such as robotics, control, computer, vision, speech recognition, pattern recognition, data mining, big data, data analytics, machine intelligence, cyber security and deep learning. It further hopes it will address the existing and emerging relationships between automation, systems engineering, system of systems engineering and soft computing. The journal will publish original and survey papers on artificial intelligence, intelligent automation and computer engineering with an emphasis on current and potential applications of soft computing. It will have a broad interest in all engineering disciplines, computer science, and related technological fields such as medicine, biology operations research, technology management, agriculture and information technology.
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