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4 期           刘尊雷,等:基于多源数据与            INLA-贝叶斯时空模型的东海小黄鱼           CPUE  标准化            50 卷

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              中国水产学会主办  sponsored by China Society of Fisheries                          https://www.china-fishery.cn
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