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M. L. Dennis Wong

Bio: M. L. Dennis Wong is an academic researcher from Heriot-Watt University. The author has contributed to research in topics: Photovoltaic system & Battery (electricity). The author has an hindex of 12, co-authored 38 publications receiving 601 citations. Previous affiliations of M. L. Dennis Wong include Swinburne University of Technology & Swinburne University of Technology Sarawak Campus.

Papers
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Journal ArticleDOI
TL;DR: A battery health cost function is proposed in this paper to quantify the impact of many damaging factors on battery, thus the effectiveness of different hybrid energy storage systems in mitigating battery stress and the associated financial analysis can be quantitatively compared.

160 citations

Journal ArticleDOI
TL;DR: A novel method of constructing logic circuits that work in a neural-like manner is demonstrated, as well as shed some lights on potential directions of designing neural circuits theoretically.

121 citations

Journal ArticleDOI
TL;DR: In this article, a multi-level hybrid energy storage system topology and its associated power management strategy is proposed to mitigate the charge/discharge stress on battery, which can improve the life expectancy of the battery and reduce the operating cost of the standalone PV-battery microgrid.

88 citations

Journal ArticleDOI
TL;DR: The result of this paper is promising in terms of the fact that it is the first attempt to use SN P systems in pattern recognition after many theoretical advancements ofSN P systems, and SN P system exhibit the feasibility for tackling pattern recognition problems.
Abstract: Spiking neural P systems (SN P systems) are a class of distributed and parallel neural-like computing models, inspired from the way neurons communicate by means of spikes. In this paper, a new variant of the systems, called SN P systems with learning functions, is introduced. Such systems can dynamically strengthen and weaken connections among neurons during the computation. A class of specific SN P systems with simple Hebbian learning function is constructed to recognize English letters. The experimental results show that the SN P systems achieve average accuracy rate 98.76% in the test case without noise. In the test cases with low, medium, and high noises, the SN P systems outperform back propagation neural networks and probabilistic neural networks. Moreover, comparing with spiking neural networks, SN P systems perform a little better in recognizing letters with noise. The result of this paper is promising in terms of the fact that it is the first attempt to use SN P systems in pattern recognition after many theoretical advancements of SN P systems, and SN P systems exhibit the feasibility for tackling pattern recognition problems.

78 citations

Journal ArticleDOI
TL;DR: A cancellable fingerprint template technique based on previous work on multi-line code (MLC) and an enhanced similarity measure to compensate the loss in accuracy for binary MLC, called the dynamically weighted integrated Dice (DWID) similarity are proposed.

65 citations


Cited by
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Book ChapterDOI
01 Jan 1982
TL;DR: In this article, the authors discuss leading problems linked to energy that the world is now confronting and propose some ideas concerning possible solutions, and conclude that it is necessary to pursue actively the development of coal, natural gas, and nuclear power.
Abstract: This chapter discusses leading problems linked to energy that the world is now confronting and to propose some ideas concerning possible solutions. Oil deserves special attention among all energy sources. Since the beginning of 1981, it has merely been continuing and enhancing the downward movement in consumption and prices caused by excessive rises, especially for light crudes such as those from Africa, and the slowing down of worldwide economic growth. Densely-populated oil-producing countries need to produce to live, to pay for their food and their equipment. If the economic growth of the industrialized countries were to be 4%, even if investment in the rational use of energy were pushed to the limit and the development of nonpetroleum energy sources were also pursued actively, it would be extremely difficult to prevent a sharp rise in prices. It is evident that it is absolutely necessary to pursue actively the development of coal, natural gas, and nuclear power if a physical shortage of energy is not to block economic growth.

2,283 citations

Journal ArticleDOI
TL;DR: An advanced ESS is required with regard to capacity, protection, control interface, energy management, and characteristics to enhance the performance of ESS in MG applications to develop a cost-effective and efficient ESS model with a prolonged life cycle for sustainable MG implementation.
Abstract: A microgrid (MG) is a local entity that consists of distributed energy resources (DERs) to achieve local power reliability and sustainable energy utilization. The MG concept or renewable energy technologies integrated with energy storage systems (ESS) have gained increasing interest and popularity because it can store energy at off-peak hours and supply energy at peak hours. However, existing ESS technology faces challenges in storing energy due to various issues, such as charging/discharging, safety, reliability, size, cost, life cycle, and overall management. Thus, an advanced ESS is required with regard to capacity, protection, control interface, energy management, and characteristics to enhance the performance of ESS in MG applications. This paper comprehensively reviews the types of ESS technologies, ESS structures along with their configurations, classifications, features, energy conversion, and evaluation process. Moreover, details on the advantages and disadvantages of ESS in MG applications have been analyzed based on the process of energy formations, material selection, power transfer mechanism, capacity, efficiency, and cycle period. Existing reviews critically demonstrate the current technologies for ESS in MG applications. However, the optimum management of ESSs for efficient MG operation remains a challenge in modern power system networks. This review also highlights the key factors, issues, and challenges with possible recommendations for the further development of ESS in future MG applications. All the highlighted insights of this review significantly contribute to the increasing effort toward the development of a cost-effective and efficient ESS model with a prolonged life cycle for sustainable MG implementation.

392 citations

Journal ArticleDOI
TL;DR: This paper explores the use of Genetic Programming in combination with K-nearest neighbor (KNN) for AMC and demonstrates that the proposed method provides better classification performance compared to other recent methods.
Abstract: Automatic Modulation Classification (AMC) is an intermediate step between signal detection and demodulation. It is a very important process for a receiver that has no, or limited, knowledge of received signals. It is important for many areas such as spectrum management, interference identification and for various other civilian and military applications. This paper explores the use of Genetic Programming (GP) in combination with K-nearest neighbor (KNN) for AMC. KNN has been used to evaluate fitness of GP individuals during the training phase. Additionally, in the testing phase, KNN has been used for deducing the classification performance of the best individual produced by GP. Four modulation types are considered here: BPSK, QPSK, QAM16 and QAM64. Cumulants have been used as input features for GP. The classification process has been divided into two-stages for improving the classification accuracy. Simulation results demonstrate that the proposed method provides better classification performance compared to other recent methods.

263 citations

Journal ArticleDOI
Gerald Sommer1
TL;DR: Pattern Recognition by Self-Organizing Neural Networks edited by Gail A Carpenter and Stephan Grossberg, MIT Press, 1991, ISBN 0-262-03176-0.
Abstract: Pattern Recognition by Self-Organizing Neural Networks edited by Gail A. Carpenter and Stephan Grossberg, MIT Press, 1991, ISBN 0-262-03176-0.

239 citations