Research Article

Application of CMAC Neural Network to Solar Energy Heliostat Field Fault Diagnosis

Table 4

Training samples ordered by fault type.

No.A1A2B1B2B3B4C1C2

10.580.640.190.250.230.140.360.41
20.530.610.220.130.230.240.390.43
30.650.890.160.250.480.350.380.45
40.900.810.330.430.490.310.460.40
50.500.780.120.240.350.310.420.46
60.550.640.120.200.350.400.450.39
70.500.610.400.350.450.410.470.34
80.530.580.320.410.090.150.300.41
90.540.590.620.680.360.410.580.37
100.590.640.390.420.610.540.350.60
110.550.590.610.680.570.510.690.62
120.590.150.570.530.860.740.590.90
130.100.210.850.790.860.730.760.88
140.150.360.810.920.540.610.750.51
150.530.700.130.240.320.410.360.61
160.510.560.310.400.460.410.500.67
170.550.600.360.390.190.080.570.35
180.600.400.620.580.790.870.320.60
190.330.450.800.760.910.810.590.63
200.320.410.750.810.560.670.620.40