2020
DOI: 10.1016/j.isatra.2019.08.044
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Neural-network-based iterative learning control of nonlinear systems

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Cited by 70 publications
(32 citation statements)
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“…Figure 8 shows the ELP obtained with equation (20). Before the training with equations (4), (6), and α = 1, the initial parameters for the NH are in equation 21 Before the training with equations (7), (9), (10), and α = 1, the initial parameters for the SONH of this document are in equation 22, rand is a random number with values between 0 and 1. a = [rand, rand, rand, rand, rand, rand, rand] T b = [rand, rand, rand, rand, rand, rand, rand] T c = [rand, rand, rand, rand, rand, rand, rand] T (22) Before the training with equations (11), (13), (14), (15), (16), (17), (18), (19), and α = 1, the initial parameters for the NNH of this document are in equation 23, rand is a random number with values between 0 and 1. a = [rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand] T b = [rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand] T c = [rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand] T (23) Table 1 shows the cost functions J (a) of (5), J (b) of (8), J (c) of (12) for the modeling of θ i 1 , θ i 2 , θ i 3 in an ELP during the training.…”
Section: Resultsmentioning
confidence: 99%
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“…Figure 8 shows the ELP obtained with equation (20). Before the training with equations (4), (6), and α = 1, the initial parameters for the NH are in equation 21 Before the training with equations (7), (9), (10), and α = 1, the initial parameters for the SONH of this document are in equation 22, rand is a random number with values between 0 and 1. a = [rand, rand, rand, rand, rand, rand, rand] T b = [rand, rand, rand, rand, rand, rand, rand] T c = [rand, rand, rand, rand, rand, rand, rand] T (22) Before the training with equations (11), (13), (14), (15), (16), (17), (18), (19), and α = 1, the initial parameters for the NNH of this document are in equation 23, rand is a random number with values between 0 and 1. a = [rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand] T b = [rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand] T c = [rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand, rand] T (23) Table 1 shows the cost functions J (a) of (5), J (b) of (8), J (c) of (12) for the modeling of θ i 1 , θ i 2 , θ i 3 in an ELP during the training.…”
Section: Resultsmentioning
confidence: 99%
“…A linear hypothesis is described as the combination of the first order terms and it is detailed as the sum of multiplication of the first order modeling parameters with the first order inputs [7], [8], [15], [16]. A linear hypothesis is described to relate the input variable of the end-effector (…”
Section: A Linear Hypothesismentioning
confidence: 99%
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