01-04-2025 | Original Paper
Ring opening of epoxidized castor oil with applied hybrid kinetic modelling model of particle swarm & simulated annealing
Authors: Mohammad ‛Aathif Addli, Intan Suhada Azmi, Silvana Dwi Nurherdiana, Mohd Azmier Ahmad, Mohd Jumain Jalil
Published in: Journal of Polymer Research | Issue 4/2025
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Abstract
The ring-opening of epoxidized castor oil is a critical step in converting epoxidized oils into polyols, essential for polyurethane synthesis. This article delves into the mechanisms of Lewis acid-catalyzed and base-catalyzed ring-opening reactions, emphasizing how different reagents and molar ratios influence hydroxylation efficiency and hydroxyl (OH) values. The study systematically evaluates the impact of various reagents on the ring-opening process, providing insights into producing flexible and rigid polyols. A significant contribution of this research is the development of a hybrid kinetic model that integrates Particle Swarm Optimization (PSO) and Simulated Annealing (SA). This model leverages the strengths of both optimization techniques to accurately predict reaction kinetics, bridging the gap between laboratory-scale and industrial-scale processes. The article also presents detailed experimental data and kinetic modeling results, showcasing the superior performance of the hybrid model in capturing the complexities of the epoxidation and ring-opening reactions. Additionally, the study compares the hydroxyl values of polyols synthesized using different reagents, highlighting their potential applications in producing flexible and semi-rigid polyurethanes. The findings offer valuable insights into optimizing sustainable polyol synthesis and expanding the knowledge base for polyol production.
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Abstract
This study comprehensively investigated the production of eco-friendly polyols through the in-situ epoxidation of castor oil, employing a hybrid kinetic modeling approach that combined Particle Swarm Optimization (PSO) and Simulated Annealing (SA). The epoxidation process was optimized using the Taguchi method, which identified stirring speed as the most significant process parameter, supported by a p-value of 0.000 and an F-value of 95.92. The reaction was carried out under optimized conditions, where 50 g of castor oil was reacted with hydrogen peroxide and acetic acid at a molar ratio of 1:1:1, a temperature of 65 °C, and a stirring speed of 200 rpm. The relative conversion of oxirane (RCO) was determined using the AOCS Official Method Cd- 957. As the reaction progressed, the near-zero RCO values confirmed complete hydroxylation. The epoxidized castor oil was then mixed with various hydroxylation reagents at epoxide-to-reagent molar ratios of 1:0.5, 1:1, and 1:1.5 to evaluate the hydroxylation rate. The results showed that all reagents achieved the fastest hydroxylation at the highest molar ratio of 1:1.5. The synthesized polyols were categorized based on their hydroxyl values, revealing that polyols produced using peracetic acid (79.3 mg KOH/g), water (85.0 mg KOH/g), and hydrogen peroxide (89.1 mg KOH/g) were suitable for flexible polyurethane applications. In contrast, polyols derived from methanol (127.9 mg KOH/g), acetic acid (139.4 mg KOH/g), and water (108.1 mg KOH/g) exhibited hydroxyl values between 100 and 250 mg KOH/g, making them more suitable for semi-rigid polyurethane applications. Kinetic parameters were determined through MATLAB R2023 A simulations, yielding reaction rate constants for key steps in the epoxidation and hydrolysis processes: k₁ = 0.03 M⁻1 min⁻1, k₂ = 0.00 M⁻1 min⁻1, k₃ = 30.00 M⁻1 min⁻1, and k₄ = 0.050 M⁻1 min⁻1. The hybrid PSO + SA simulation model demonstrated a strong correlation with experimental data, achieving an R2 value of 0.9961, significantly outperforming the individual PSO model (0.9836) and SA model (0.9779).
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