登录
首页 » matlab » q-learning

q-learning

于 2020-12-17 发布
0 211
下载积分: 1 下载次数: 20

代码说明:

说明:  在动态环境中使用Q学习优化算法进行优化,仿真软件为Matlab(Q-learning optimization algorithm is used to optimize in dynamic environment. The simulation software is MATLAB)

文件列表:

The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\change_peaks.m, 3334 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\change_stepsize_linear.m, 1086 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\change_stepsize_random.m, 212 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\Constant_Basis_Function.m, 55 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\current_peak_calc.m, 1619 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\deq.m, 2014 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\dummy_eval.m, 1485 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\eval_movpeaks.m, 1909 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\ffa_move.m, 587 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\findrange.m, 245 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\fitness.m, 1413 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\free_peaks.m, 1000 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\getCurrentPeak.m, 945 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\getMaxCoordinate.m, 948 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\getMaxHeight.m, 939 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\getMaximumPeak.m, 946 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\getMinCoordinate.m, 949 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\getPeakHeights.m, 955 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\getPeakPositions.m, 948 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\get_avg_error.m, 1018 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\get_current_error.m, 1133 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\get_number_of_evals.m, 990 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\get_offline_error.m, 987 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\get_offline_performance.m, 1008 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\get_right_peak.m, 1117 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\init_ffa.m, 144 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\init_parameters.m, 5051 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\init_peaks.m, 1925 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\main.m, 14383 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\movpeaks.m, 1672 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\Peak_Function1.m, 1209 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\Peak_Function_Cone.m, 1217 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\printPeakData.m, 1194 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\set_global.m, 1302 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\startup.m, 1115 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ\testtest.m, 5151 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\README.md, 591 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master\DEQ, 0 , 2018-12-27
The-Use-of-Q-learning-for-Optimization-in-Dynamic-Environments-master, 0 , 2018-12-27

下载说明:请别用迅雷下载,失败请重下,重下不扣分!

发表评论

0 个回复

  • bppid
    说明:  S函数的BP神经网络PID控制器Simulink仿真(S function of BP neural network PID controller Simulink simulation)
    2020-10-24 09:47:22下载
    积分:1
  • flot_optique
    how to estimate the optical flow with horn and schunk method
    2010-05-14 19:44:52下载
    积分:1
  • glhundungrnn
    用混沌理论和广义回归神经网络进行短期负荷的预测,取得了满意的效果(with Chaos Theory and the general regression neural network for short-term load forecasts, achieved satisfactory results)
    2006-12-08 12:05:41下载
    积分:1
  • ppt
    After identifying the best MNT− 1 nodes with the simplified branch metric and the accumulated branch metric at stage NT − 1, we then calculate the LLR of each coded bit utilizing the standard squared Euclidian distance metric. The log-likelihood ratio (LLR) of a posteriori probability (APP) of each coded bit conditioned on the received signal y is normally calculated using the max-log approximation.
    2013-11-26 13:25:03下载
    积分:1
  • TrendIntraDay_M_Old
    matlab 日内趋势交易代码(TrendIntraDay trade codes of matlab)
    2015-02-02 09:48:54下载
    积分:1
  • Examples_Of_Programming_In_Matlab
    Examples Of Programming In Matlab, 英文电子书,快速掌握matlab编程。(Examples Of Programming In Matlab, English e-books, quickly grasp the matlab programming.)
    2008-06-28 13:23:19下载
    积分:1
  • APF
    PSIM软件APF控制,采用PI控制,治理效果明显(PSIM software APF control, PI control, effective governance)
    2013-04-06 10:57:04下载
    积分:1
  • overlap_add
    digital signal processing
    2010-09-01 22:50:44下载
    积分:1
  • DVHop
    WSN的dv_hop定位算法 WSN的dv_hop定位算法 WSN的dv_hop定位算法(wsn dvhop )
    2009-04-23 15:47:01下载
    积分:1
  • Genetic-algorithm-using-MATLAB
    说明:  遗传算法在MATLAB环境中的实现,适合图形模式识别广泛应用等方面(Genetic algorithm implementation in MATLAB environment, suitable for wide range of graphics applications such as pattern recognition)
    2011-03-25 18:36:11下载
    积分:1
  • 696516资源总数
  • 106783会员总数
  • 25今日下载