Forecasting return products in an integrated forward/reverse supply chain utilizing an ANFIS
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Kannan Govindan | D. Thresh Kumar | Hamed Soleimani | H. Soleimani | Govindan Kannan | D. Thresh Kumar | Nokhbegan Boulevard | Iran Qazvin
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