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  • evolutionary algorithms  (4)
  • short term load forecasting  (2)
  • Bayesian inference  (1)
  • English  (6)
  • 1
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    Unknown
    MDPI - Multidisciplinary Digital Publishing Institute
    Publication Date: 2024-04-14
    Description: The development of kernel methods and hybrid evolutionary algorithms (HEAs) to support experts in energy forecasting is of great importance to improving the accuracy of the actions derived from an energy decision maker, and it is crucial that they are theoretically sound. In addition, more accurate or more precise energy demand forecasts are required when decisions are made in a competitive environment. Therefore, this is of special relevance in the Big Data era. These forecasts are usually based on a complex function combination. These models have resulted in over-reliance on the use of informal judgment and higher expense if lacking the ability to catch the data patterns. The novel applications of kernel methods and hybrid evolutionary algorithms can provide more satisfactory parameters in forecasting models. We aimed to attract researchers with an interest in the research areas described above. Specifically, we were interested in contributions towards the development of HEAs with kernel methods or with other novel methods (e.g., chaotic mapping mechanism, fuzzy theory, and quantum computing mechanism), which, with superior capabilities over the traditional optimization approaches, aim to overcome some embedded drawbacks and then apply these new HEAs to be hybridized with original forecasting models to significantly improve forecasting accuracy.
    Keywords: QA75.5-76.95 ; TA1-2040 ; hybrid models ; energy forecasting ; empirical mode decomposition ; evolutionary algorithms ; wavelet transform ; quantum computing mechanism ; support vector regression / support vector machines ; chaotic mapping mechanism ; extreme learning machine ; fuzzy time series ; kernel methods ; spiking neural networks ; thema EDItEUR::U Computing and Information Technology::UY Computer science
    Language: English
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  • 2
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    Unknown
    MDPI - Multidisciplinary Digital Publishing Institute
    Publication Date: 2024-04-14
    Description: Accurate energy forecasting is important to facilitate the decision-making process in order to achieve higher efficiency and reliability in power system operation and security, economic energy use, contingency scheduling, the planning and maintenance of energy supply systems, and so on. In recent decades, many energy forecasting models have been continuously proposed to improve forecasting accuracy, including traditional statistical models (e.g., ARIMA, SARIMA, ARMAX, multi-variate regression, exponential smoothing models, Kalman filtering, Bayesian estimation models, etc.) and artificial intelligence models (e.g., artificial neural networks (ANNs), knowledge-based expert systems, evolutionary computation models, support vector regression, etc.). Recently, due to the great development of optimization modeling methods (e.g., quadratic programming method, differential empirical mode method, evolutionary algorithms, meta-heuristic algorithms, etc.) and intelligent computing mechanisms (e.g., quantum computing, chaotic mapping, cloud mapping, seasonal mechanism, etc.), many novel hybrid models or models combined with the above-mentioned intelligent-optimization-based models have also been proposed to achieve satisfactory forecasting accuracy levels. It is important to explore the tendency and development of intelligent-optimization-based modeling methodologies and to enrich their practical performances, particularly for marine renewable energy forecasting.
    Keywords: QA75.5-76.95 ; T58.5-58.64 ; Ensemble Empirical Mode Decomposition ; Brain Storm Optimization ; asset management ; institutional investors ; state transition algorithm ; kernel ridge regression ; energy price hedging ; multi-objective grey wolf optimizer ; five-year project ; complementary ensemble empirical mode decomposition (CEEMD) ; active investment ; portfolio management ; Long Short Term Memory ; time series forecasting ; LEM2 ; improved complete ensemble empirical mode decomposition with adaptive noise (ICEEMDAN) ; feature selection ; Markov-switching GARCH ; condition-based maintenance ; substation project cost forecasting model ; Gaussian processes regression ; deep convolutional neural network ; individual ; wind speed ; empirical mode decomposition (EMD) ; crude oil prices ; artificial intelligence techniques ; intrinsic mode function (IMF) ; multi-step wind speed prediction ; support vector regression (SVR) ; short term load forecasting ; energy futures ; General Regression Neural Network ; metamodel ; sparse Bayesian learning (SBL) ; commodities ; ensemble ; comparative analysis ; crude oil price forecasting ; electrical power load ; differential evolution (DE) ; fuzzy time series ; kernel learning ; short-term load forecasting ; data inconsistency rate ; renewable energy consumption ; long short-term memory ; energy forecasting ; modified fruit fly optimization algorithm ; forecasting ; combination forecasting ; Markov-switching ; weighted k-nearest neighbor (W-K-NN) algorithm ; hybrid model ; interpolation ; particle swarm optimization (PSO) algorithm ; regression ; diversification ; thema EDItEUR::U Computing and Information Technology::UY Computer science
    Language: English
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  • 3
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    Unknown
    MDPI - Multidisciplinary Digital Publishing Institute
    Publication Date: 2024-04-11
    Description: Mobile Mapping technologies have seen a rapid growth of research activity and interest in the last years, due to the increased demand of accurate, dense and geo-referenced 3D data. Their main characteristic is the ability of acquiring 3D information of large areas dynamically. This versatility has expanded their application fields from the civil engineering to a broader range (industry, emergency response, cultural heritage...), which is constantly widening. This increased number of needs, some of them specially challenging, is pushing the Scientific Community, as well as companies, towards the development of innovative solutions, ranging from new hardware / open source software approaches and integration with other devices, up to the adoption of artificial intelligence methods for the automatic extraction of salient features and quality assessment for performance verification The aim of the present book is to cover the most relevant topics and trends in Mobile Mapping Technology, and also to introduce the new tendencies of this new paradigm of geospatial science.
    Keywords: TA1-2040 ; T1-995 ; LRF ; smartphone ; unmanned vehicle ; sensor fusion ; 2D laser scanner ; semantic enrichment ; Vitis vinifera ; indoor scenes ; terrestrial laser scanning ; vine size ; quadric fitting ; multi-group-step L-M optimization ; grammar ; MLS ; indoor topological localization ; trajectory fusion ; second order hidden Markov model ; room type tagging ; fingerprinting ; restoration ; laser scanning ; map management ; Lidar localization system ; point clouds ; binary vocabulary ; self-calibration ; 3D processing ; cultural heritage ; encoder ; category matching ; indoor mapping ; convolutional neural network (CNN) ; tunnel cross section ; visual positioning ; enhanced RANSAC ; segmentation-based feature extraction ; image retrieval ; handheld ; crowdsourcing trajectory ; visual landmark sequence ; indoor localization ; mobile mapping ; rapid relocation ; sensors configurations ; precision agriculture ; 3D digitalization ; mobile laser scanning ; robust statistical analysis ; plant vigor ; motion estimation ; visual simultaneous localization and mapping ; dynamic environment ; Bayesian inference ; automated database construction ; portable mobile mapping system ; SLAM ; small-scale vocabulary ; ORB-SLAM2 ; LiDAR ; IMMS ; point cloud ; optical sensors ; tunnel central axis ; constrained nonlinear least-squares problem ; 3D point clouds ; wearable mobile laser system ; geometric features ; 2D laser range-finder ; RGB-D camera ; OctoMap ; thema EDItEUR::T Technology, Engineering, Agriculture, Industrial processes::TB Technology: general issues::TBX History of engineering and technology
    Language: English
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  • 4
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    Unknown
    MDPI - Multidisciplinary Digital Publishing Institute
    Publication Date: 2024-04-14
    Description: Accurate forecasting performance in the energy sector is a primary factor in the modern restructured power market, accomplished by any novel advanced hybrid techniques. Particularly in the Big Data era, forecasting models are always based on a complex function combination, and energy data are always complicated by factors such as seasonality, cyclicity, fluctuation, dynamic nonlinearity, and so on. To comprehensively address this issue, it is insufficient to concentrate only on simply hybridizing evolutionary algorithms with each other, or on hybridizing evolutionary algorithms with chaotic mapping, quantum computing, recurrent and seasonal mechanisms, and fuzzy inference theory in order to determine suitable parameters for an existing model. It is necessary to also consider hybridizing or combining two or more existing models (e.g., neuro-fuzzy model, BPNN-fuzzy model, seasonal support vector regression–chaotic quantum particle swarm optimization (SSVR-CQPSO), etc.). These advanced novel hybrid techniques can provide more satisfactory energy forecasting performances. This book aimed to attract researchers with an interest in the research areas described above. Specifically, we were interested in contributions towards recent developments, i.e., hybridizing or combining any advanced techniques in energy forecasting, with the superior capabilities over the traditional forecasting approaches, with the ability to overcome some embedded drawbacks, and with the very superiority to achieve significant improved forecasting accuracy.
    Keywords: QA75.5-76.95 ; TA1-2040 ; hybrid models ; autoregressive moving average with exogenous variable (ARMAX) ; energy forecasting ; fuzzy group ; quantile forecasting ; evolutionary algorithms ; quantum computing mechanism ; cluster validity ; support vector regression / support vector machines ; artificial neural networks ; principal component analysis ; bayesian inference ; thema EDItEUR::U Computing and Information Technology::UY Computer science
    Language: English
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  • 5
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    Unknown
    MDPI - Multidisciplinary Digital Publishing Institute
    Publication Date: 2024-04-14
    Description: In last few decades, short-term load forecasting (STLF) has been one of the most important research issues for achieving higher efficiency and reliability in power system operation, to facilitate the minimization of its operation cost by providing accurate input to day-ahead scheduling, contingency analysis, load flow analysis, planning, and maintenance of power systems. There are lots of forecasting models proposed for STLF, including traditional statistical models (such as ARIMA, SARIMA, ARMAX, multi-variate regression, Kalman filter, exponential smoothing, and so on) and artificial-intelligence-based models (such as artificial neural networks (ANNs), knowledge-based expert systems, fuzzy theory and fuzzy inference systems, evolutionary computation models, support vector regression, and so on). Recently, due to the great development of evolutionary algorithms (EA) and novel computing concepts (e.g., quantum computing concepts, chaotic mapping functions, and cloud mapping process, and so on), many advanced hybrids with those artificial-intelligence-based models are also proposed to achieve satisfactory forecasting accuracy levels. In addition, combining some superior mechanisms with an existing model could empower that model to solve problems it could not deal with before; for example, the seasonal mechanism from the ARIMA model is a good component to be combined with any forecasting models to help them to deal with seasonal problems.
    Keywords: QA75.5-76.95 ; TK7885-7895 ; meta-heuristic algorithms ; artificial neural networks (ANNs) ; knowledge-based expert systems ; statistical forecasting models ; evolutionary algorithms ; short term load forecasting ; novel intelligent technologies ; support vector regression/support vector machines ; seasonal mechanism ; thema EDItEUR::U Computing and Information Technology::UY Computer science
    Language: English
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  • 6
    facet.materialart.
    Unknown
    MDPI - Multidisciplinary Digital Publishing Institute
    Publication Date: 2024-04-14
    Description: More accurate and precise energy demand forecasts are required when energy decisions are made in a competitive environment. Particularly in the Big Data era, forecasting models are always based on a complex function combination, and energy data are always complicated. Examples include seasonality, cyclicity, fluctuation, dynamic nonlinearity, and so on. These forecasting models have resulted in an over-reliance on the use of informal judgment and higher expenses when lacking the ability to determine data characteristics and patterns. The hybridization of optimization methods and superior evolutionary algorithms can provide important improvements via good parameter determinations in the optimization process, which is of great assistance to actions taken by energy decision-makers. This book aimed to attract researchers with an interest in the research areas described above. Specifically, it sought contributions to the development of any hybrid optimization methods (e.g., quadratic programming techniques, chaotic mapping, fuzzy inference theory, quantum computing, etc.) with advanced algorithms (e.g., genetic algorithms, ant colony optimization, particle swarm optimization algorithm, etc.) that have superior capabilities over the traditional optimization approaches to overcome some embedded drawbacks, and the application of these advanced hybrid approaches to significantly improve forecasting accuracy.
    Keywords: QA75.5-76.95 ; TK7885-7895 ; hybrid models ; chaotic mapping mechanism ; recurrence plot theory ; energy forecasting ; empirical mode decomposition ; evolutionary algorithms ; quantum computing mechanism ; general regression neural network ; optimization methodologies ; support vector regression/support vector machines ; thema EDItEUR::U Computing and Information Technology::UY Computer science
    Language: English
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