time variant fuzzy time series approach for forecasting using particle swarm optimization

نویسندگان

mehdi mahnam department of industrial engineering, amirkabir university of technology, 424 hafez avenue, tehran, iran

seyyed mohammad taghi fatemi ghomi professor of industrial engineering, amirkabir university of technology, 424 hafez avenue, tehran, iran

چکیده

fuzzy time series have been developed during the last decade to improve the forecast accuracy. many algorithms have been applied in this approach of forecasting such as high order time invariant fuzzy time series. in this paper, we present a hybrid algorithm to deal with the forecasting problem based on time variant fuzzy time series and particle swarm optimization algorithm, as a highly efficient and a new evolutionary computation technique inspired by birds’ flight and communication behaviors. the proposed algorithm determines the length of each interval in the universe of discourse and degree of membership values, simultaneously. two numerical data sets are selected to illustrate the proposed method and compare the forecasting accuracy with four fuzzy time series methods. the results indicate that the proposed algorithm satisfactorily competes well with similar approaches.

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عنوان ژورنال:
international journal of industrial engineering and productional research-

جلد ۲۳، شماره ۴، صفحات ۲۶۹-۲۷۶

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