基于平行CPSS结构的智慧能源调度机器人及其知识自动化理论
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1. CaptureofdensecorevesiclesatsynapsesbyJNK-dependentphosphorylationofsynaptotagmin-4.CellRep.2017Nov21;21(8):2118-2133
2. ComparingNon-VisualandVisualGuidanceMethodsforNarrowFieldofViewAugmentedRealityDisplays.IEEETransactionsonVisualizationandComputerGraphics(TVCG),Volume26,Issue12,P3389-3401,2020
3. Enantioselective Aminohydroxylation of Styrenyl Olefins Catalyzed by an Engineered Hemoprotein.Angew.Chem,Int.Ed.2019,58,3138-3142
4.Modelling, applications, and evaluations of optimal sizing and placement of distributed generations: A critical state-of-the-art survey
- 关键词:
- distributed generation; optimal sizing and placement; optimizationmethods; problem formulation;PARTICLE SWARM OPTIMIZATION; POWER POINT TRACKING; RADIAL-DISTRIBUTIONNETWORKS; OPTIMAL DG ALLOCATION; DISTRIBUTION-SYSTEM; PROGRAMMINGAPPROACH; SEARCH ALGORITHM; PV SYSTEMS; HYBRID; UNITS
Distributed generation (DG) has attracted significant attention due to its great potential for enhancing economical and technical performance of power systems and reducing dependence on fossil fuels. Optimal sizing and placement are critical for stimulating such potential, about which a considerable number of models and algorithms have been proposed in past literature. This paper attempts to undertake a comprehensive review on optimal sizing and placement of DG via a systematic methodology procedure, including definition and classifications of DG, modelling and problem formulation with different technical and economic criteria, and summary of optimization algorithms. Common features and distinctive characteristics of both models and methods are identified, followed by evaluations and comparisons based on their practical performance in various test systems. Selection of DG techniques with respect to application scenarios, indispensable and optional considerations in DG planning models, and pros and cons of algorithms are listed in tables for a clearer understanding. Lastly, a total of 107 algorithms are addressed, which are classified into five categories. Particular, hybrid methods can deal with complex engineering problems with multiple objective functions and constraints most effectively and robustly. Future research trends are also highlighted with the aim of providing a comprehensive and state-of-the-art survey for researchers, engineers, and other stakeholders.
...5.Modelling, applications, and evaluations of optimal sizing and placement of distributed generations: A critical state-of-the-art survey
- 关键词:
- distributed generation; optimal sizing and placement; optimizationmethods; problem formulation;PARTICLE SWARM OPTIMIZATION; POWER POINT TRACKING; RADIAL-DISTRIBUTIONNETWORKS; OPTIMAL DG ALLOCATION; DISTRIBUTION-SYSTEM; PROGRAMMINGAPPROACH; SEARCH ALGORITHM; PV SYSTEMS; HYBRID; UNITS
Distributed generation (DG) has attracted significant attention due to its great potential for enhancing economical and technical performance of power systems and reducing dependence on fossil fuels. Optimal sizing and placement are critical for stimulating such potential, about which a considerable number of models and algorithms have been proposed in past literature. This paper attempts to undertake a comprehensive review on optimal sizing and placement of DG via a systematic methodology procedure, including definition and classifications of DG, modelling and problem formulation with different technical and economic criteria, and summary of optimization algorithms. Common features and distinctive characteristics of both models and methods are identified, followed by evaluations and comparisons based on their practical performance in various test systems. Selection of DG techniques with respect to application scenarios, indispensable and optional considerations in DG planning models, and pros and cons of algorithms are listed in tables for a clearer understanding. Lastly, a total of 107 algorithms are addressed, which are classified into five categories. Particular, hybrid methods can deal with complex engineering problems with multiple objective functions and constraints most effectively and robustly. Future research trends are also highlighted with the aim of providing a comprehensive and state-of-the-art survey for researchers, engineers, and other stakeholders.
...6.Comprehensive overview of maximum power point tracking algorithms of PV systems under partial shading condition
- 关键词:
- MPPT; PV systems; Partial shading condition; Review;SHADED PHOTOVOLTAIC SYSTEMS; GENERALIZED PATTERN SEARCH; ARTIFICIALNEURAL-NETWORK; EXTREMUM SEEKING CONTROL; SALP SWARM ALGORITHM;SLIDING-MODE CONTROL; GLOBAL MPPT; OPTIMIZATION ALGORITHM; COLLECTIVEINTELLIGENCE; GENETIC ALGORITHM
This paper is designed to undertake a comprehensive review on state-of-the-art maximum power point tracking (MPPT) methods of photovoltaic (PV) systems under partial shading condition (PSC). Particularly, the exploitation and utilization of various MPPT control approaches are of great significance to ensure a reliable and efficient maximum power extracting of PV systems. Hence, this paper systematically summarizes and discusses various MPPT algorithms utilized in PV systems under PSC, in which a total of 62 MPPT algorithms are elaborated, together with their modifications. Besides, they are categorized into seven groups, e.g., conventional algorithms, meta-heuristic algorithms, hybrid algorithms, mathematics-based algorithms, artificial intelligence (AI) algorithms, algorithms based on exploitation of characteristics curves, and other algorithms. Particularly, there are 25 meta-heuristic algorithms further divided into three categories for a more detailed discussion, namely, biology-based algorithms, physics-based algorithms, and sociology-based algorithms. In general, readers can make the most suitable choices according to application requirements and system specifications. This review can be regarded as a one-stop handbook for further studies in related field. (c) 2020 Elsevier Ltd. All rights reserved.
...7.Comprehensive overview of maximum power point tracking algorithms of PV systems under partial shading condition
- 关键词:
- MPPT; PV systems; Partial shading condition; Review;SHADED PHOTOVOLTAIC SYSTEMS; GENERALIZED PATTERN SEARCH; ARTIFICIALNEURAL-NETWORK; EXTREMUM SEEKING CONTROL; SALP SWARM ALGORITHM;SLIDING-MODE CONTROL; GLOBAL MPPT; OPTIMIZATION ALGORITHM; COLLECTIVEINTELLIGENCE; GENETIC ALGORITHM
This paper is designed to undertake a comprehensive review on state-of-the-art maximum power point tracking (MPPT) methods of photovoltaic (PV) systems under partial shading condition (PSC). Particularly, the exploitation and utilization of various MPPT control approaches are of great significance to ensure a reliable and efficient maximum power extracting of PV systems. Hence, this paper systematically summarizes and discusses various MPPT algorithms utilized in PV systems under PSC, in which a total of 62 MPPT algorithms are elaborated, together with their modifications. Besides, they are categorized into seven groups, e.g., conventional algorithms, meta-heuristic algorithms, hybrid algorithms, mathematics-based algorithms, artificial intelligence (AI) algorithms, algorithms based on exploitation of characteristics curves, and other algorithms. Particularly, there are 25 meta-heuristic algorithms further divided into three categories for a more detailed discussion, namely, biology-based algorithms, physics-based algorithms, and sociology-based algorithms. In general, readers can make the most suitable choices according to application requirements and system specifications. This review can be regarded as a one-stop handbook for further studies in related field. (c) 2020 Elsevier Ltd. All rights reserved.
...8.Smart dispatching for energy internet with complex cyber-physical-social systems: A parallel dispatch perspective
- 关键词:
- ACP method; AI; complex system theory; cyber-physical-social system;cyber-physical system; energy internet; parallel dispatch; paralleldispatching robot; parallel intelligence; parallel machine learning;parallel system theory; smart artificial society modeling; smartdispatching; virtual and real interaction;POWER; ELECTRICITY; GAME; STABILITY; EMERGENCE; POLICY; GO
Energy internet (EI) is a complex coupled multienergy system; it is essential to investigate its multienergy dispatching optimization issues. To this end, this paper first proposes a novel conception of smart dispatching for EI with a complex cyber-physical-social system (CPSS) network from the perspective of parallel dispatch, called parallel dispatching robot (PDR), and investigates the implementations of PDR based on smart artificial society (SAS) modeling. First, we introduce EI and describe the dispatching issues of EI. Second, we discuss several important concepts supporting the parallel dispatch conception of EI, including knowledge automation (KA), CPSS, and parallel machine learning (PML). On the basis of these, we elaborate the concept of parallel dispatch. Moreover, we construct a large closed-loop feedback control framework of parallel dispatch for EI integrating a CPSS network based on KA and PML. Third, we establish an experimental platform for PDR research based on the proposed parallel dispatch framework. Fourth, we develop the PML-based SAS models of a single PDR in centralized dispatching modes and group PDRs in decentralized dispatching modes to achieve crowd wisdom emergence and performance improvement in current cyber-physical system frameworks of EI. Moreover, we design an external global closed loop for PDR to evaluate its operation stability. Lastly, we conduct a detailed discussion on PDR and offer some prospects for its engineering implementations. The biggest innovation of this paper lies in systematically proposing the smart dispatching concept and framework for complex CPSS-based EI from the perspective of parallel dispatch and thoroughly investigating how to use SAS modeling to implement parallel dispatching and control for EI considering human and social factors, which is a major extension and theoretical improvement to existing single smart wide area robot concept and a preliminary attempt in investigating a shift from Energy 4.0 to Energy 5.0 in China.
...9.A new generation of AI: A review and perspective on machine learning technologies applied to smart energy and electric power systems
- 关键词:
- adversarial learning; deep learning; Energy Internet; ensemble learning;hybrid learning; machine learning; new generation of artificialintelligence (AI 2.0); parallel learning; reinforcement learning; smartenergy and electric power systems; Smart Grid; transfer learning;TERM WIND-SPEED; COMBINED-FLOW; REINFORCEMENT; STABILITY; ALGORITHM;PARADIGM; ENSEMBLE; OPTIMIZER; NETWORKS; DISPATCH
The new generation of artificial intelligence (AI), called AI 2.0, has recently become a research focus. Data-driven AI 2.0 will accelerate the development of smart energy and electric power system (Smart EEPS). In AI 2.0, machine learning (ML) forms a typical representative algorithm category used to achieve predictions and judgments by analyzing and learning from massive amounts of historical and synthetic data to help people make optimal decisions. ML has preliminarily been applied to the Smart Grid (SG) and Energy Internet (EI) fields, which are important Smart EEPS representatives. AI 2.0, especially ML, is undergoing a critical period of rapid development worldwide and will play an essential role in Smart EEPS. In this context, this study, combined with the emerging SG and EI technologies, takes the typical representative of AI 2.0-ML-as the research objective and reviews its research status in the operation, optimization, control, dispatching, and management of SG and EI. The paper focuses on introducing and summarizing the mainstream uses of seven representative ML methods, including reinforcement learning, deep learning, transfer learning, parallel learning, hybrid learning, adversarial learning, and ensemble learning, in the SG and EI fields. In this survey, we begin with an introduction to these seven types of ML methods and then systematically review their applications in Smart EEPS. Finally, we discuss ML development under the big data thinking and offer a prospect for the future development of AI 2.0 and ML in Smart EEPS. We conduct this survey intended to arouse the interest and excitement of experts and scholars in the EEPS industry and to look ahead to efforts that jointly promote the rapid development of AI 2.0 in the Smart EEPS field.
...10.Smart dispatching for energy internet with complex cyber-physical-social systems: A parallel dispatch perspective
- 关键词:
- ACP method; AI; complex system theory; cyber-physical-social system;cyber-physical system; energy internet; parallel dispatch; paralleldispatching robot; parallel intelligence; parallel machine learning;parallel system theory; smart artificial society modeling; smartdispatching; virtual and real interaction;POWER; ELECTRICITY; GAME; STABILITY; EMERGENCE; POLICY; GO
Energy internet (EI) is a complex coupled multienergy system; it is essential to investigate its multienergy dispatching optimization issues. To this end, this paper first proposes a novel conception of smart dispatching for EI with a complex cyber-physical-social system (CPSS) network from the perspective of parallel dispatch, called parallel dispatching robot (PDR), and investigates the implementations of PDR based on smart artificial society (SAS) modeling. First, we introduce EI and describe the dispatching issues of EI. Second, we discuss several important concepts supporting the parallel dispatch conception of EI, including knowledge automation (KA), CPSS, and parallel machine learning (PML). On the basis of these, we elaborate the concept of parallel dispatch. Moreover, we construct a large closed-loop feedback control framework of parallel dispatch for EI integrating a CPSS network based on KA and PML. Third, we establish an experimental platform for PDR research based on the proposed parallel dispatch framework. Fourth, we develop the PML-based SAS models of a single PDR in centralized dispatching modes and group PDRs in decentralized dispatching modes to achieve crowd wisdom emergence and performance improvement in current cyber-physical system frameworks of EI. Moreover, we design an external global closed loop for PDR to evaluate its operation stability. Lastly, we conduct a detailed discussion on PDR and offer some prospects for its engineering implementations. The biggest innovation of this paper lies in systematically proposing the smart dispatching concept and framework for complex CPSS-based EI from the perspective of parallel dispatch and thoroughly investigating how to use SAS modeling to implement parallel dispatching and control for EI considering human and social factors, which is a major extension and theoretical improvement to existing single smart wide area robot concept and a preliminary attempt in investigating a shift from Energy 4.0 to Energy 5.0 in China.
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