2022
DOI: 10.1155/2022/1476565
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Prediction of Soil Heavy Metal Content Based on Deep Reinforcement Learning

Abstract: Since the prediction accuracy of heavy metal content in soil by common spatial prediction algorithms is not ideal, a prediction model based on the improved deep Q network is proposed. The state value reuse is used to accelerate the learning speed of training samples for agents in deep Q network, and the convergence speed of model is improved. At the same time, adaptive fuzzy membership factor is introduced to change the sensitivity of agent to environmental feedback value in different training periods and impr… Show more

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