A novel combination forecasting model for wind power integrating least square support vector machine, deep belief network, singular spectrum analysis and locality-sensitive hashing
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DOI: 10.1016/j.energy.2018.11.128
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Keywords
Wind power; Combination forecasting model; Deep belief network; Singular spectrum analysis; Locality-sensitive hashing; Least square support vector machine;All these keywords.
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