A cross-entropy algorithm based on Quasi-Monte Carlo estimation and its application in hull form optimization |
Liu, Xin
(Weihai Institute of Marine Information Science and Technology, Shandong Jiaotong University)
Zhang, Heng (Wuchang Shipbuilding Industry Group Co., Ltd.) Liu, Qiang (Wuchang Shipbuilding Industry Group Co., Ltd.) Dong, Suzhen (SOYOTEC LIMITED) Xiao, Changshi (Hubei Key Laboratory of Inland Shipping Technology) |
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