Prediction of output response probability for sound environment system by introducing stochastic regression and fuzzy inference for simplified standard system model

A. Ikuta, H. Orimoto
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引用次数: 1

Abstract

The traditional standard stochastic system models, such as the AR (Autoregressive), MA (Moving average) and ARMA (Autoregressive moving average) models, usually assume the Gaussian property for the fluctuation distribution. These models assume also the linear regression function for the time series of system input and output, and the well-known least squares method is applied based only on the linear correlation data. In the actual sound environment system, however, the stochastic process exhibits various non-Gaussian distributions, and there potentially exist various nonlinear correlations in addition to the linear correlation between input and output time series. Consequently, often the system input and output relationship in the actual phenomenon cannot be represented by a simple model such as the AR, MA and ARMA models. In this study, a prediction method of output response probability for sound environment system is derived by introducing a correction method for simplified standard system models. More precisely, a parameter-linear regression model is adopted as a simplified standard system model for the input and output relationship. Furthermore, a correction method for the simplified standard system model is proposed by introducing the stochastic regression and fuzzy inference. The proposed method is applied to the actual data in a sound environmnet system, and the practical usefulness is verified.
对简化标准系统模型引入随机回归和模糊推理的声环境系统输出响应概率预测
传统的标准随机系统模型,如AR(自回归)、MA(移动平均)和ARMA(自回归移动平均)模型,通常假设波动分布具有高斯性质。这些模型还假定系统输入和输出的时间序列为线性回归函数,并且仅基于线性相关数据应用众所周知的最小二乘法。而在实际声环境系统中,随机过程表现为各种非高斯分布,输入输出时间序列除了线性相关外,还可能存在各种非线性相关。因此,实际现象中的系统输入和输出关系往往不能用AR、MA和ARMA模型这样的简单模型来表示。本文通过引入简化标准系统模型的修正方法,推导了声环境系统输出响应概率的预测方法。更准确地说,采用参数线性回归模型作为输入输出关系的简化标准系统模型。在此基础上,通过引入随机回归和模糊推理,提出了一种简化标准系统模型的修正方法。将该方法应用于声环境系统的实际数据,验证了该方法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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