Editorial: Advances in Stochastic System Modeling, Control, Optimization, and Their Applications
Abstract
:1. Introduction
2. The Present Issue
- Ref.
- [4] A simulation-based policy improvement (SBPI) scheme was proposed to obtain the optimal policies using Markov decision processes (MDPs), where the state transition probabilities are unknown. In particular, a new method was introduced for improving the overall efficiency of SBPI by using optimal computing budget allocation (OCBA) methods based on accumulated samples. In contrast to existing methods, the proposed method improves the overall efficiency until an optimal policy can be found in the consideration of the state traversal property of the SBPI. The estimation for the mean and variance of the Q-value for each action was obtained, and then the optimal policy was obtained with a lower budget.
- Ref.
- [5] The improved artificial bee colony algorithm was proposed for power systems. In particular, heat storage devices and electric boilers were added to the cogeneration system to alleviate the wind curtailment phenomenon. In this paper, the main reasons for wind curtailment were analyzed according to the structural characteristics of the power supply in the northern part of China. Moreover, a scheduling model of a cogeneration system is constructed.
- Ref.
- [6] A robust controller was designed to deal with transient dynamics of distributed generator (DG)-based power electronic devices. In this study, a nonlinear control strategy for VSG with uncertain disturbance was proposed to enhance the system’s stability in the islanded, grid-connected, and transition modes. Firstly, the model for a VSG’s rotor considering virtual inertia and damping coefficients was presented.Then, the nonlinear backstepping controller (BSC) method combined with the extended state observer (ESO) was constructed to compensate for the uncertainty. To deal with the uncertain items, a second-order ESO was built to estimate uncertainties and external disruptions.
- Ref.
- [7] A dynamic model of Chinese solar greenhouses was developed based on energy conservation laws, and a nonlinear adaptive control strategy combined with a radial basis function neural network was presented to control temperatures. Note that the greenhouse system is described with complex dynamic characteristics, such as multi-disturbance, parameter uncertainty, and strong nonlinearity. Therefore, directly adopting a traditional conventional control method is difficult. In this paper, nonlinear adaptive controller parameters were determined by using generalized minimum variance laws, while unmodeled dynamics were estimated by using a radial basis function neural network. The experimental results show that the new control scheme enhanced the control performance.
- Ref.
- [8] A long short-term memory (LSTM) model with discrete wavelet transformations (DWTs) was presented for multi-sensor fault diagnoses. As the core component of the rotating machinery, the failure of rolling bearings may lead to serious accidents during industrial production operations. This study uses a DWT-LSTM model to diagnose the health of rolling bearings. In particular, the DWT was used first to obtain detailed fault information with respect to both different frequency and time scales. Secondly, the LSTM network was employed to characterize the long-term dependencies hidden in the time series of the fault’s information. The proposed DWT-LSTM method makes full use of the advantages of feature extraction based on expert experience and deep network learning in order to discover complex patterns from a large amount of data.
3. Future Trends
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Zhang, Q.; Shu, Z. Editorial: Advances in Stochastic System Modeling, Control, Optimization, and Their Applications. Electronics 2022, 11, 4133. https://doi.org/10.3390/electronics11244133
Zhang Q, Shu Z. Editorial: Advances in Stochastic System Modeling, Control, Optimization, and Their Applications. Electronics. 2022; 11(24):4133. https://doi.org/10.3390/electronics11244133
Chicago/Turabian StyleZhang, Qichun, and Zhan Shu. 2022. "Editorial: Advances in Stochastic System Modeling, Control, Optimization, and Their Applications" Electronics 11, no. 24: 4133. https://doi.org/10.3390/electronics11244133
APA StyleZhang, Q., & Shu, Z. (2022). Editorial: Advances in Stochastic System Modeling, Control, Optimization, and Their Applications. Electronics, 11(24), 4133. https://doi.org/10.3390/electronics11244133