1. Introduction
South Africa has been experiencing unprecedented electricity shortages due to aging coal plants prone to breakdowns, compounded by high energy demand driven by population growth [
1,
2]. On the other hand, South Africa’s reliance on coal-fired power makes it a leading global contributor to climate change, emitting substantial greenhouse gases that fuel global warming, with notable effects felt in the Western Cape province through heat waves [
3]. Decreasing these emissions involves transitioning from carbon-intensive electricity production to renewable energy sources, particularly harnessing clean and eco-friendly wind energy. South Africa leads Africa in wind energy capacity, accounting for 30% of 9 GW of wind energy capacity with the best wind potential in provinces, like Eastern Cape, Western Cape, Northern Cape, and KwaZulu-Natal [
4]. However, prioritizing wind energy for electricity generation is hindered by cheaper coal availability [
5]. Wind energy continues to lead South Africa’s transition to a low-carbon economy, advancing a secure renewable energy future. According to modelling presented by the Department of Mineral Resources and Energy (DMRE), wind energy is slated to contribute between 69 and 76 GW of new capacity by 2050. This projected growth in wind energy capacity presents significant opportunities for investment, industrialization, and job creation.
As of 2023, South Africa has 34 installed wind farms, 22 fully operational, adding over 3443 MW to the electricity grid [
6]. Therefore, wind energy production diversifies a country’s energy supply mix, stimulates innovation, job creation, and economic development, reduces reliance on fossil fuels, and reduces exposure to renewable energy price volatility. However, it is essential to note that there has been no increase in installed capacity in 2024 compared to 2023. The lack of growth is illustrated in
Table 1, which presents the total installed wind power in South Africa over the ten years from 2014 to 2024 [
7].
The CSIR report [
7], released on 17 March 2025, states that the national average electricity price rose by 12.74% to ZAR 1.95/kWh, significantly higher than the cost of wind power at around ZAR 0.60/kWh. This significant cost difference highlights the need to increase wind energy deployment in South Africa.
Although onshore wind farms are currently the primary source of wind energy, offshore wind holds substantial untapped potential in South Africa. Recent studies by [
8,
9] estimated South Africa’s offshore wind potential at 44.52 TWh annually from shallow waters and an impressive 2387.08 TWh from deep waters, which is eight times the country’s total electricity consumption [
8,
9].
Wind energy deployment in South Africa faces several challenges. The remote locations of many wind farms lead to higher transmission costs and limited grid access due to weak infrastructure [
10,
11]. Variable wind speeds contribute to voltage fluctuations and grid instability [
12]. Additionally, most wind turbines are imported, which raises installation and maintenance costs due to limited local expertise [
13]. Environmental concerns persist, including habitat fragmentation, land-use conflicts, and bird and bat fatalities [
10,
14].
The SAWEA 2024 report [
15] emphasized the urgent need to implement ESKOM’s 14,000 km transmission development plan and support independent transmission projects to improve grid integration in wind-rich regions. Addressing these challenges requires robust planning, spatial optimization, and active stakeholder engagement.
2. Literature Review
Worldwide, countries are shifting to renewable energy sources, such as wind energy, to decrease carbon dioxide emissions, and extensive research has been conducted on wind energy potential assessment globally [
16]. In most of these assessments, the two-parameter Weibull distribution is widely used in wind speed analysis due to its flexibility, simplicity, and adaptability [
17,
18]. It provides accurate wind speed estimations and supports closed-form parameter estimation [
19]. Its reliability in fitting experimental data makes it ideal for wind energy applications. However, the accuracy of the two-parameter Weibull distribution-based wind potential assessments is highly dependent on the correct estimation of its shape (
) and scale (
) parameters, which significantly impact wind power density calculations. Poor parameter estimation can lead to misleading wind power potential evaluations, affecting investment decisions in wind energy projects [
20]. Despite its frequent application, the Weibull distribution has been shown to be outperformed by alternative models in various studies. For instance, [
21] evaluated wind energy potential in Fort Hare, South Africa, using six statistical models, including the Weibull and generalized extreme value (GEV) distributions. Their results indicated that GEV provided the best fit, surpassing Weibull, which ranked third. The study recommended improving Weibull parameter estimation through advanced optimization techniques, such as metaheuristics, to enhance its accuracy.
Researchers have attempted to refine Weibull parameter estimation using numerical and metaheuristic techniques, with numerous studies highlighting the strengths and weaknesses of each approach. For example, [
20] analyzed ten years of wind speed data from twelve low wind speed areas in Nigeria to assess wind energy potential using traditional numerical methods and advanced metaheuristic algorithms. Their study employed the graphical method (GM), energy pattern factor (EPF), Lysen’s empirical method (EML), method of moments (MoM), and maximum likelihood estimation (MLE) for parameter estimation. Metaheuristic approaches were also applied, including cuckoo search, bat algorithm, firefly algorithm, particle swarm optimization (PSO), and grey wolf optimization (GWO). The findings revealed that metaheuristic techniques yielded more accurate Weibull parameter estimates than numerical methods, with Obudu ranking as the most favorable site for wind energy development at both 50 m and 400 m heights. Similarly, [
22] compared numerical and metaheuristic optimization methods for Weibull parameter estimation in India’s wind resource assessment. WAsP outperformed all numerical methods, while social spider optimization (SSO) surpassed PSO and genetic algorithm (GA) in accuracy and efficiency. Metaheuristic methods proved more effective than numerical approaches. Offshore sites exhibited the highest wind power density (452.32 W/m
2 at 120 m), followed by nearshore and onshore, with offshore achieving the highest annual energy production.
Ref. [
23] compared five probability distributions, namely Rayleigh, Weibull, inverse Gaussian, Burr Type XII, and generalized Pareto, using five metaheuristic optimization techniques: grasshopper optimization algorithm (GOA), GWO, moth-flame optimization (MFO), salp swarm algorithm (SSA), and WOA. Their study demonstrated that WOA, GWO, and MFO exhibited the highest accuracies when estimating Weibull parameters, reinforcing their effectiveness in wind energy applications. Similarly, [
24] assessed wind energy potential in Catalca, Turkey, comparing numerical methods (GM, MoM, EPF, mean standard deviation, and power density) with GA, a metaheuristic optimization algorithm. The GA outperformed the numerical techniques, with EPF showing the poorest performance.
Furthermore, Ref. [
25] evaluated wind energy in Jordan using Weibull, Gamma, and Rayleigh distributions. Their findings showed that the WOA outperformed traditional numerical methods, such as the MoM and MLE, in estimating distribution parameters. The superior performance of WOA highlights the effectiveness of artificial intelligence-based approaches over conventional techniques in enhancing wind energy prediction accuracy across various locations.
Metaheuristic optimization algorithms continue to gain traction in Weibull parameter estimation. These methods, inspired by the behaviors of humans, birds, and animals, have shown promising results [
26]. For instance, Ref. [
26] analyzed wind characteristics in India and compared various wind distribution models, demonstrating the effectiveness of such nature-inspired approaches. The MFO method, a metaheuristic optimization algorithm, outperformed other methods in parameter estimation. Offshore sites showed the highest wind power density, indicating their potential for wind energy projects. Also, in a study by [
27], hourly wind speeds in Tamil Nadu, India, were predicted using a feed-forward multi-layer perceptron (FFMLP) artificial neural network (ANN) optimized by six metaheuristic methods. GWO outperformed other methods. Moreover, Ref. [
28] investigated the wind potential across the flat, coastal, and offshore sites in India using nine different methods, incorporating remote sensing and traditional measurement techniques. Their study identified the teaching–learning-based optimization (TLBO) algorithm as the most effective, outperforming PSO and GA in accuracy. Offshore sites demonstrated the highest wind power density, reinforcing their suitability for large-scale wind energy projects.
Furthermore, Ref. [
29] investigated various methods for estimating Weibull distribution parameters to assess wind energy potential in Egypt. The study compared conventional analytical techniques, like the MLE and EPF, with metaheuristic approaches, including PSO and bald eagle search (BES). The findings indicated that the BES algorithm provided the best accuracy and stability for wind parameter estimation, proving to be the most effective for wind energy modelling.
Researchers have widely adopted machine learning techniques for wind speed forecasting. Ref. [
1] compared CNN and Vanilla LSTM models for wind energy prediction in Limpopo, South Africa. Their results indicated that CNN achieved an accuracy of 88.66% in monthly time-step forecasts, identifying winter as the most favorable season for wind energy generation. Similarly, [
30] investigated wind energy potential across different South African climates using advanced machine learning techniques, with CNN outperforming other models in accuracy. Furthermore, [
31] developed a wind power forecasting model that combined the WOA with support vector machines (SVM). The WOA-SVM hybrid model significantly improved short-term wind energy predictions, outperforming SVM, PSO-SVM, and extreme learning machine (ELM) models.
Among hybrid approaches, [
32] assessed wind power potential in Çanakkale Province, Türkiye, using Weibull and Rayleigh distributions. They also tested the artificial neural network–genetic algorithm (ANN-GA) and ANN-PSO hybrid models, concluding that ANN-GA produced the most accurate estimates (
= 0.94839). Ref. [
33] proposed an alternative probability distribution model for wind energy estimation, demonstrating that the bacterial foraging optimization algorithm (BFOA) and simulated annealing (SA) outperformed the Weibull distribution.
Numerous studies have explored numerical methods for Weibull parameter estimation. For example, Ref. [
34] compared seven numerical techniques, including the MoM and EPF, to estimate Weibull parameters in Andhra Pradesh, India. Their study found that the novel energy pattern factor method (NEPF) provided the most accurate results, while MLE was most suitable for Rajamahendravaram. In a separate study, Ref. [
35] evaluated six numerical estimation techniques using five years of wind data from Bangladesh. The power density method yielded the most accurate results, with Sandwip recording the highest wind power density. Also, Ref. [
36] assessed Chad’s wind energy potential using the Weibull distribution. The researchers compared thirteen methods for parameter estimation and found that the EPF method performed best across 13 regions. The GM method was most effective for cumulative wind speed distribution, with Faya-largeau showing the highest wind energy density. Ref. [
37] assessed Weibull parameter estimation methods in Tonga using 12 months of wind data at 34 m and 20 m heights. Their study identified the MoM as the most accurate numerical technique, estimating an annual energy production of 198.57 MWh with Vergnet 275 kW turbines. Similarly, Ref. [
38] evaluated six numerical methods for estimating Weibull parameters using six years of wind data at different heights. The study found that the empirical methods of Justus (EMJ) and EML performed best at low and medium heights, while the MLE and MML methods were most accurate at higher elevations. The EPF and GM methods demonstrated moderate accuracy at all heights. Furthermore, Ref. [
4] assessed eight numerical techniques for Weibull parameter estimation using 5.5 years of wind data from Fort Beaufort, South Africa. The study found that the OWM performed best, yielding an average wind speed of 2.999 m/s and a wind power density of 38.45 W/m
2, making it suitable for small-scale wind applications.
The studies reviewed highlight the need for continued advancements in Weibull parameter estimation. While traditional numerical methods remain fundamental, evidence suggests that artificial intelligence-based and metaheuristic approaches offer improved accuracy and efficiency, warranting further exploration. However, the effectiveness of each estimation method is site-specific, with a method that performs well at one site potentially being the least effective at another. This study focuses on using the two-parameter Weibull distribution alongside five widely applied numerical methods: empirical method of Lysen (EML), energy pattern factor (EPF) method, method of moments (MoM), openwind method (OWM), and maximum likelihood estimation (MLE) method, and compares them with the whale optimization algorithm (WOA), a metaheuristic optimization algorithm. This approach is novel for the region and aims to evaluate the effectiveness of the WOA in estimating Weibull scale and shape parameters for wind potential assessment. The study seeks to validate existing findings that metaheuristic algorithms outperform traditional numerical methods.
Section 2 presents the literature review, detailing relevant studies and methodologies.
Section 3 outlines the materials and methods, including the site description, wind data sources, and parameter estimation techniques. It also covers other metrics, such as wind power density and the test statistics used for performance analysis.
Section 4 discusses the main results and findings, while
Section 5 concludes with a summary and recommendations.
5. Conclusions
The study investigates the wind energy potential in Whittlesea, South Africa, using the two-parameter Weibull distribution as a sustainable alternative to address electricity shortages in off-grid communities, like Ekuphumleni. The research compares five numerical methods, namely the empirical method of Lysen, energy pattern factor, method of moments, openwind method, and maximum likelihood estimation method, with the whale optimization algorithm to determine the most accurate Weibull parameter estimation. Goodness-of-fit tests, including the coefficient of determination (R2) and wind power density error (WPDE), were used to assess the accuracy of these methods. Additionally, net fitness, which combines R2 and WPDE, was utilized to measure overall performance comprehensively. The analysis reveals that the average wind speed at 10 m AGL is 3.88 m/s, with seasonal variations peaking in winter (4.59 m/s) and the highest wind speeds recorded in July. Among the methods tested, the WOA outperforms all five numerical methods, demonstrating superior accuracy in estimating Weibull scale and shape parameters. However, openwind also showed comparable results. The calculated wind power density was 67.29 W/m2, categorizing Whittlesea’s wind potential as poor and indicating that only small-scale wind turbines would be viable. The predominant eastward wind direction suggests that wind turbine placement should align accordingly for optimal efficiency.
The findings highlight that conventional large-scale wind turbines may not be effective in Whittlesea due to low wind speeds, classified under wind power class 1 (poor) within the 3.5–5.6 m/s range, as depicted in
Table 3. Instead, augmentation systems (diffusers and concentrators) are recommended to enhance energy capture. Encasing small-scale wind turbines with concentrators and diffusers amplifies wind speeds at the rotor plane, allowing power generation even at lower wind speeds [
83,
84]. However, the study has limitations, as it focuses solely on wind speeds at 10 m AGL without considering higher altitudes or turbulence effects. Wind speeds generally increase with altitude, so higher elevations (such as 20 m, 25 m, and 30 m AGL) may yield more favorable conditions for energy generation.
Additionally, turbulence can impact wind turbine efficiency and longevity, affecting overall energy output. Future research should address these factors to assess wind potential and small-scale wind turbine feasibility accurately. Furthermore, comparative studies with other metaheuristic algorithms, such as genetic algorithms or particle swarm optimization, could provide further insights. A techno-economic assessment is also suggested to evaluate the financial feasibility of deploying wind turbines, considering capital and maintenance costs.