2021
DOI: 10.1049/cth2.12199
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Fuzzy model‐based multi‐objective dynamic programming with modified particle swarm optimization approach for the balance control of bicycle robot

Abstract: Existing studies for the balance control of unmanned bicycle robots only consider constant forward velocity and a single optimal objective that cannot be applied to the complex motion situation. To balance the bicycle robot with time‐varying forward velocity, only with the steering actuator, the multiple objective optimal balance control issue is studied here. A fuzzy state‐space model under different forward velocities is firstly offered based on the non‐linear Euler–Lagrange model. Based on this, a closed‐lo… Show more

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Cited by 13 publications
(4 citation statements)
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“…the improved whale algorithm has high search accuracy, fast convergence speed, and strong stability. The improved whale optimization algorithm solves the optimal value function and actual function problems, and good results are obtained by a large number of experiments, which provides certain theoretical support for the application of the algorithm [19][20].…”
Section: ( )mentioning
confidence: 81%
“…the improved whale algorithm has high search accuracy, fast convergence speed, and strong stability. The improved whale optimization algorithm solves the optimal value function and actual function problems, and good results are obtained by a large number of experiments, which provides certain theoretical support for the application of the algorithm [19][20].…”
Section: ( )mentioning
confidence: 81%
“…Four components are used to apply risk assessment concepts and prioritize contributing factors: risk exposure, the level of likelihood of risk occurrence, the level of risk impact on cyclist safety, and the severity of risk factors [12,36,37]. These are summarized as follows:…”
Section: Risk Assessment Conceptmentioning
confidence: 99%
“…The introduction of inertia weights coordinates to a certain extent the optimization-seeking ability of the PSO algorithm, 3) [20].…”
Section: Neural Network Intelligent Control Based On Mpso Optimizatio...mentioning
confidence: 99%