49 research outputs found
Environmental Benefits of Using Wind Generation to Power Plug-In Hybrid Electric Vehicles
As alternatives to conventional vehicles, Plug-in Hybrid Electric Vehicles (PHEVs) running off electricity stored in batteries could decrease oil consumption and reduce carbon emissions. By using electricity derived from clean energy sources, even greater environmental benefits are obtainable. This study examines the potential benefits arising from the widespread adoption of PHEVs in light of Alberta’s growing interest in wind power. It also investigates PHEVs’ capacity to mitigate natural fluctuations in wind power generation
Fault diagnosis for PV arrays considering dust impact based on transformed graphical feature of characteristic curves and convolutional neural network with CBAM modules
Various faults can occur during the operation of PV arrays, and both the
dust-affected operating conditions and various diode configurations make the
faults more complicated. However, current methods for fault diagnosis based on
I-V characteristic curves only utilize partial feature information and often
rely on calibrating the field characteristic curves to standard test conditions
(STC). It is difficult to apply it in practice and to accurately identify
multiple complex faults with similarities in different blocking diodes
configurations of PV arrays under the influence of dust. Therefore, a novel
fault diagnosis method for PV arrays considering dust impact is proposed. In
the preprocessing stage, the Isc-Voc normalized Gramian angular difference
field (GADF) method is presented, which normalizes and transforms the resampled
PV array characteristic curves from the field including I-V and P-V to obtain
the transformed graphical feature matrices. Then, in the fault diagnosis stage,
the model of convolutional neural network (CNN) with convolutional block
attention modules (CBAM) is designed to extract fault differentiation
information from the transformed graphical matrices containing full feature
information and to classify faults. And different graphical feature
transformation methods are compared through simulation cases, and different
CNN-based classification methods are also analyzed. The results indicate that
the developed method for PV arrays with different blocking diodes
configurations under various operating conditions has high fault diagnosis
accuracy and reliability
A Review of Lithium-Ion Battery Models in Techno-economic Analyses of Power Systems
The penetration of the lithium-ion battery energy storage system (BESS) into
the power system environment occurs at a colossal rate worldwide. This is
mainly because it is considered as one of the major tools to decarbonize,
digitalize, and democratize the electricity grid. The economic viability and
technical reliability of projects with batteries require appropriate assessment
because of high capital expenditures, deterioration in charging/discharging
performance and uncertainty with regulatory policies. Most of the power system
economic studies employ a simple power-energy representation coupled with an
empirical description of degradation to model the lithium-ion battery. This
approach to modelling may result in violations of the safe operation and
misleading estimates of the economic benefits. Recently, the number of
publications on techno-economic analysis of BESS with more details on the
lithium-ion battery performance has increased. The aim of this review paper is
to explore these publications focused on the grid-scale BESS applications and
to discuss the impacts of using more sophisticated modelling approaches. First,
an overview of the three most popular battery models is given, followed by a
review of the applications of such models. The possible directions of future
research of employing detailed battery models in power systems' techno-economic
studies are then explored
Day-ahead electricity demand forecasting competition: post-COVID paradigm
The COVID-19 related shutdowns have made significant impacts on the electric grid operation worldwide. The global electrical demand plummeted around the planet in 2020 continuing into 2021. Moreover, demand shape has been profoundly altered as a result of industry shutdowns, business closures, and people working from home. In view of such massive electric demand changes, energy forecasting systems struggle to provide an accurate demand prediction, exposing operators to technical and financial risks, and further reinforcing the adverse economic impacts of the pandemic. In this context, the “IEEE DataPort Day-Ahead Electricity Demand Forecasting Competition: Post-COVID Paradigm" was organized to support the development and dissemination state-of-the-art load forecasting techniques that can mitigate the adverse impact of pandemic-related demand uncertainties. This paper presents the findings of this competition from the technical and organizational perspectives. The competition structure and participation statistics are provided, and the winning methods are summarized. Furthermore, the competition dataset and problem formulation is discussed in detail. Finally, the dataset is published along with this paper for reproducibility and further research
Price forecasting and optimal operation of wholesale customers in a competitive electricity market
I hereby declare that I am the sole author of this thesis. I authorize the University of Waterloo to lend this thesis to other institutions or indi-viduals for the purpose of scholarly research. I further authorize the University of Waterloo to reproduce this thesis by photocopy-ing or by other means, in total or in part, at the request of other institutions or individuals for the purpose of scholarly research. i This thesis addresses two main issues: first, forecasting short-term electricity market prices; and second, the application of short-term electricity market price forecasts to operation planning of demand-side Bulk Electricity Market Customers (BEMCs). The Ontario electricity market is selected as the primary case market and its structure is stud-ied in detail. A set of explanatory variable candidates is then selected accordingly, which may explain price behavior in this market. In the process of selecting the explanatory variable candidates, some important issues, such as direct or indirect effects of the vari