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基于改进神经网络和IOWA算子的风速组合预测
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作者 敖培 赵四方 +1 位作者 冯志鹏 李延强 《数字技术与应用》 2014年第9期71-71,共1页
为了对风速进行准确的预测,本文提出一种计算智能改进神经网络和IOWA算子的组合预测方法。实验表明,与单项预测模型相比,该算法有更高的预测精度。
关键词 计算智能神经网络 IOWA算子
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Model of Land Suitability Evaluation Based on Computational Intelligence 被引量:4
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作者 JIAO Limin LIU Yaolin 《Geo-Spatial Information Science》 2007年第2期151-156,共6页
A novel model of land suitability evaluation is built based on computational intelligence (CI). A fuzzy neural network (FNN) is constructed by the integration of fuzzy logic and artificial neural network (ANN). The st... A novel model of land suitability evaluation is built based on computational intelligence (CI). A fuzzy neural network (FNN) is constructed by the integration of fuzzy logic and artificial neural network (ANN). The structure and process of this network is clear. Fuzzy rules (knowledge) are expressed in the model explicitly, and can be self-adjusted by learning from samples. Genetic algorithm (GA) is employed as the learning algorithm to train the network, and makes the training of the model efficient. This model is a self-learning and self-adaptive system with a rule set revised by training. 展开更多
关键词 land suitability evaluation computational intelligence fuzzy neural network genetic algorithm
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Multi-agent reinforcement learning using modular neural network Q-learning algorithms
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作者 杨银贤 《Journal of Chongqing University》 CAS 2005年第1期50-54,共5页
Reinforcement learning is an excellent approach which is used in artificial intelligence,automatic control, etc. However, ordinary reinforcement learning algorithm, such as Q-learning with lookup table cannot cope wit... Reinforcement learning is an excellent approach which is used in artificial intelligence,automatic control, etc. However, ordinary reinforcement learning algorithm, such as Q-learning with lookup table cannot cope with extremely complex and dynamic environment due to the huge state space. To reduce the state space, modular neural network Q-learning algorithm is proposed, which combines Q-learning algorithm with neural network and module method. Forward feedback neural network, Elman neural network and radius-basis neural network are separately employed to construct such algorithm. It is revealed that Elman neural network Q-learning algorithm has the best performance under the condition that the same neural network training method, i.e. gradient descent error back-propagation algorithm is applied. 展开更多
关键词 reinforcement learning Q-LEARNING neural network artificial intelligence
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