A New Method for Parameter Estimation of Multi-Dimension Time Varying Coefficient Time Series Modeling via Neural Network and Probing into Application on Intelligent Transportation System (ITS)
نویسنده
چکیده
by Dong Decun Institute Transportation Studies University of California, Berkeley 109 Mclaughlin Hall, Berkeley, CA94720-1720 (510)643-8852 fax:(510)643-5456 E-mail:[email protected] Kanafani, Adib Institute Transportation Studies University of California, Berkeley 110 Mclaughlin Hall, Berkeley, CA94720-1720 (510)642-3585 E-mail:kanafani@euler Zhang Wei-Bin Institute Transportation Studies University of California, Berkeley (510)231-9538 E-mail:wbzhang@garnet
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