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Real-Time Forecasting by Bio-Inspired Models

机译:生物启发模型的实时预测

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In recent years, bio-inspired methods for problem solving, such as Artificial Neural Networks (ANNs) or Genetic and Evolutionary Algorithms (GEAs), have gained an increasing acceptance as alternative approaches for forecasting, due to advantages such as nonlinear learning and adaptive search. The present work reports the use of these techniques for Real-Time Forecasting (RTF), where there is a need for an autonomous system capable of fast replies. Comparisons among bio-inspired and conventional approaches (e.g., Exponential Smoothing), revealed better forecasting performances for the evolutionary and connectionist models.
机译:近年来,由于非线性学习和自适应搜索等优点,诸如人工神经网络(ANN)或遗传进化算法(GEA)等受生物启发的问题解决方法已越来越被人们接受为预测的替代方法。 。本工作报告了将这些技术用于实时预测(RTF),其中需要一种能够快速回复的自治系统。生物启发方法和常规方法(例如指数平滑)之间的比较表明,进化模型和连接主义模型的预测性能更好。

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