Output list
Journal article
Published 2025
Renewable and Sustainable Energy Reviews, 226, Part C, 116326
The accelerating deployment of photovoltaic (PV) systems intensifies the urgency to address various challenges in their performance prediction, operation and maintenance, and long-term reliability. Digital Twin (DT) technology – leveraging advancements in Industry 4.0 – offers great potential to tackle such challenges, by serving a wide range of PV applications and use cases. Nevertheless, the adoption of Digital Twins for PV systems (PVDTs) is still in its early stages, with limited published research work in this area. This paper presents a systematic literature review (SLR) of 61 peer-reviewed PVDT studies, aiming to map recent research trends, identify gaps, and provide recommendations guided by the review results. The works presented in the reviewed articles were categorized based on predefined review criteria, and were examined against a set of proposed PVDT eligibility criteria, stemming from commonly accepted generalized DT definitions and taxonomies. The review reveals that most reported implementations lack essential features, mainly bidirectional data flows and self-adaptability, with only 3.3 % of papers meeting all the eligibility criteria. Key identified trends include a dominance of data-driven models for power prediction, and limited utilization for life cycle assessments and design optimizations. Based on the review findings, the paper further introduces a general DT taxonomy tailored to PV applications and guided by the identified trends and gaps. This study emphasizes the need for unified and standardized PVDT definitions, comprehensive multi-domain modelling approaches, and integration of sustainability metrics to guide future research and industrial adoption.
Conference proceeding
Date presented 18/12/2024
2024 International Conference on Sustainable Technology and Engineering (i-COSTE), 1 - 7
International Conference on Sustainable Technology and Engineering (i-COSTE 2024), 18/12/2024–20/12/2024, Perth, WA
An energy study of the Carnarvon power system using load demand, irradiance and photovoltaic generation data acquired from the power system operator, for calender year 2018, has been performed. This study utilised the HOMER Pro simulation system to determine photovoltaic and battery capacities to be applied to the Carnarvon power system to operate, without fuelled prime mover driven synchronous generation (FSG) input, over a 24 hour cycle given adequate irradiation. This goal is realised by using a metric that balances competing mechanisms in deciding PV and battery storage capacities. The metric calculation resulted in capacities of 35MW for PV and 90MWhr for battery storage, resulting in a renewable energy fraction of 96.2 %, 589 hours of FSG operation and levelised cost of energy (LCoE) of 47.6c/kWhr. Power ratio and storage ratio give dimensionless quantities for PV and storage sizes relative to load demand. These values can estimate PV and battery capacities for similar systems in similar environments to achieve comparable outcomes. The determined capacity of 35MW of PV is assumed to be all roof-top installed. This is based on roof-top potential estimates, made in other work, of 70MW for Carnarvon.
Conference proceeding
Published 2023
2023 IEEE PES Innovative Smart Grid Technologies - Asia (ISGT Asia), 1 - 5
2023 IEEE PES Innovative Smart Grid Technologies - Asia (ISGT Asia), 21/11/2023–24/11/2023, Auckland, New Zealand
Facilitating data sharing while upholding privacy is essential for driving meaningful insights, promoting informed decision-making, and fostering responsible data-driven solutions in today’s energy management. This is especially important in the context of load forecasting, where accurate predictions of energy consumption patterns are needed for efficient energy management. The existing models guarantee the protection of the load profile data of all households for low-aggregate level load forecasting. However, in the real world, some customers may be willing to fully share their data and others may not. Moreover, persuading some customers to give consent for direct use and full disclosure of their load profile data is not always possible. Accordingly, this paper introduces the concepts of full and limited consent levels- the former refers to the willingness of an individual to fully disclose their ground truth, otherwise, their privacy must be protected under the limited consent level while releasing the aggregate forecast. Moreover, this study contributes to the research gap on the intricate balance between utility and privacy in the domain of probabilistic low-aggregate load forecasting particularly when a community comprises various proportions of customers with full/limited consent levels. In doing so, a differential privacy (DP) model for short-term probabilistic load forecasting is used so that the user, such as grid operators or retail providers, receives the forecast retaining the 95% confidence interval (CI) of the unperturbed/original forecast. Furthermore, a Bayesian neural network (BNN) is utilized as the forecasting engine.
Journal article
Solar irradiance nowcasting system trial and evaluation for islanded microgrid control purposes
Published 2022
Energies, 15, 17, Article 6100
The rapid increase in solar photovoltaic (PV) integration into electricity networks introduces technical challenges due to varying PV outputs. Rapid ramp events due to cloud movements are of particular concern for the operation of remote islanded microgrids (IMGs) with high solar PV penetration. PV systems and optionally controllable distributed energy resources (DERs) in IMGs can be operated in an optimised way based on nowcasting (forecasting up to 60 min ahead). This study aims to evaluate the performance under Perth, Western Australian conditions, of an all-sky imager (ASI)-based nowcasting system, installed at Murdoch University in Perth, Western Australia (WA). Nowcast direct normal irradiance (DNI) and global horizontal irradiance (GHI) are inputted into a 5 kWp solar PV system with a direct current (DC) power rating/alternating current (AC) power rating ratio of 1.0. A newly developed classification method provided a simplified irradiance variability classification. The obtained nowcasting system evaluation results show that the nowcasting system’s accuracy decreases with an increase in lead time (LT). Additionally, the nowcasting system’s accuracy is higher when the weather is either mostly clear (with a recorded LT15 mean absolute deviation (MAD) of 0.38 kW) or overcast (with a recorded LT15 MAD of 0.19 kW) than when the weather is intermittently cloudy with varying cloud conditions (with a recorded LT15 MAD of 0.44 kW). With lower errors observed in lower LTs, overall, it might be possible to integrate the nowcasting system into the design of IMG controllers. The overall performance of the nowcasting system at Murdoch University was as expected as it is comparable to the previous evaluations in five other different sites, namely, PSA, La Africana, Evora, Oldenburg, and Julich.
Journal article
Applications for solar irradiance nowcasting in the control of microgrids: A review
Published 2021
Renewable and Sustainable Energy Reviews, 147, Art. 111187
The integration of solar photovoltaic (PV) into electricity networks introduces technical challenges due to varying PV output. Rapid ramp events due to cloud movements are of particular concern for the operation of remote islanded microgrids (MGs) with high penetration of solar PV generation. PV plants and optionally controllable distributed energy resources (DERs) in MGs can be operated in an optimized way based on nowcasting, which is also called very short-term solar irradiance forecasting up to 60 min ahead. This study presents an extensive literature review on nowcasting technologies along with their current and future possible applications in the control of MGs. Ramp rates control and scheduling of spinning reserves are found to be the most recognized applications of nowcasting in MGs. An online survey has been conducted to identify the limitations, benefits and challenges of deploying nowcasting in MGs. The survey outcomes show that the incorporation of nowcasting tools in MG operations is still limited, though the possibility of increasing solar PV penetration levels in MGs if nowcasting tools are incorporated is acknowledged. Additionally, recent nowcasting tools, such as sky camera-based tools, require further validation under various conditions for more widespread adaptation by power system operators.
Journal article
Published 2021
Denki Gakkai ronbunshi. D, Sangyō ōyō bumonshi, 121, 4, 437 - 444
Conference paper
Published 2021
9th Research in Engineering Education Symposium (REES 2021) and 32nd Australasian Association for Engineering Education Conference (REES AAEE 2021), 2, 1152
9th Research in Engineering Education Symposium and 32nd Australasian Association for Engineering Education Conference (REES AAEE 2021), 05/12/2021–08/12/2021, Perth, Australia.
By engaging with practice, engineering students develop capabilities, self-efficacy, motivation, and professional identity, among other outcomes. Many students engage with practice by completing work experience, also known as a practicum. However, availability and quality of practicums vary. Engineers Australia leads a working group of senior engineers, university staff and students to improve the availability and quality of students’ engagement with practice. To understand students’ recent experiences, especially during the COVID-19 pandemic, we surveyed stakeholders.
Conference paper
Published 2020
2020 International Conference on Smart Grids and Energy Systems (SGES)
2020 International Conference on Smart Grids and Energy Systems (SGES), 23/11/2020–26/11/2020, Perth, WA
Variable distributed energy resources (DERs) such as solar and wind are rapidly becoming common in low-inertia microgrids (MGs) worldwide as the world explores cost-efficient and sustainable energy solutions. Additionally, the urgent need for greenhouse gas emission reductions and the availability of vast renewable energy resources serve as motivations to harvest these renewabies. Solar photovoltaic (PV) technology is one of the most utilised due to the significant drop in prices for solar PV systems. However, the variable nature of solar PV generation due to cloud movements introduces rapid ramp events thus affecting power system management. Nowcasting, which is defined as very short-term solar irradiance forecasting, together with controllable DERs, can be integrated into MGs to possibly address these ramp events and enable an increase in PV penetration levels in MGs. This study outlines the benefits and limitations of nowcasting and its applications in the control of MGs obtained from a survey. From the survey, it was evident that sky camera-based nowcasting technology is still new but has potential in MG applications. Applications of nowcasting in MGs included ramp rates control and scheduling of spinning reserves. Additionally, PV penetration levels may be increased if nowcasting tools are incorporated into the control of MGs. However, the main barrier impeding the utilisation of sky camera-based nowcasting technology is the lack of experience and lack of demonstrated reliability.
Conference paper
Low voltage network clustering for high renewable penetration studies–an isolated network case study
Published 2020
2020 IEEE PES Innovative Smart Grid Technologies Europe (ISGT-Europe)
2020 IEEE PES Innovative Smart Grid Technologies Europe (ISGT-Europe), 26/10/2020–28/10/2020, The Hague, Netherlands
Photovoltaic (PV) hosting capacity determination for power systems often entails power network simulation work that is onerous due to the typically large number of medium voltage (MV)/low voltage (LV) feeders, even for small isolated diesel networks. Dividing the power system into several parts has proven itself useful as a means of simulating the system as a whole. The availability of consistent data containing important attributes (e.g., network configuration, load and customer data) for each feeder and identifying the relevant attributes is crucial in clustering. These attributes form the input, on which the clustering is performed. This paper presents the observation of clustering a unique remote network in Western Australia in which PV penetration has been significantly increased over the last decade. K-means clustering methodology is utilised in this work to assign the feeders into different groups. Thirteen different attributes for each feeder were available as a basis for the clustering. This paper also identified the suitable representative feeders for each cluster, which can be used for system-wide simulation work.
Journal article
Published 2020
IET Renewable Power Generation, 14, 19, 3989 - 3995
Deployment of distributed energy resources has rapidly increased during the last few years. The uptake of renewable energy and especially photovoltaic (PV) systems are of interest to utilities in remote and rural areas where the use of conventional power generation is costly. Investigating the effects of such PV systems on isolated power systems at different penetration levels is a relevant research topic. This study reports on the data acquisition system deployed in a remote town in Western Australia and presents some of the findings and observations extracted from the captured real data. It highlights the maximum PV output variations and investigates the underlying factors. The impact of the PV systems on the voltage across the network is also analysed in this study. The studies show that inverter tripping events have led to larger PV output variations in shorter intervals while the cloud movements have contributed to variations in longer intervals.