Modeling and prediction of cadmium ion biosorption efficiency using neural networks with Hypnea valentiae

P. Thamarai, R. Kamalesh, V.C. Deivayanai, S. Karishma, A. Saravanan, P.R. Yaashikaa, A.S. Vickram
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Abstract

Heavy metals in water, particularly cadmium, pose significant risks to environmental and public health due to their toxicity. This study investigates the removal of cadmium ions from aqueous solutions using Hypnea valentiae, a naturally abundant and cost-effective biosorbent. Batch experiments demonstrated that optimal cadmium removal occurred at pH 5, a biosorbent dose of 2 g/L, a contact time of 50 min, and a temperature of 303 K. Characterization using scanning electron microscopy, energy-dispersive X-ray spectroscopy, Fourier-transform infrared spectroscopy, and X-ray diffraction confirmed morphological and chemical changes in the biosorbent, indicating successful binding of cadmium ions to surface functional groups. Kinetic analysis revealed that the adsorption process followed a pseudo-second-order model, highlighting chemisorption as the dominant mechanism. Isotherm modeling showed that the Langmuir model best described the adsorption, with a maximum capacity of 141.24 mg/g. Thermodynamic studies indicated that the process was exothermic and spontaneous, with decreasing spontaneity at higher temperatures. Furthermore, an artificial neural network model demonstrated strong predictive accuracy (R2 = 0.989), closely aligning experimental and predicted outcomes. Regeneration tests showed that the Hypnea valentiae biosorbent retained 63.4 % of its original efficiency after eight cycles, highlighting its durability and potential for reuse. These findings highlight Hypnea valentiae's potential as an efficient, sustainable biosorbent for cadmium remediation, offering a viable solution for addressing heavy metal pollution in water systems.
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利用神经网络模拟和预测垂花对镉离子的生物吸附效率
水中的重金属,特别是镉,由于其毒性,对环境和公众健康构成重大风险。本研究研究了利用天然丰富且具有成本效益的生物吸附剂Hypnea valentiae去除水溶液中的镉离子。批量实验表明,在pH为5,生物吸附剂剂量为2 g/L,接触时间为50 min,温度为303 K的条件下,镉的去除效果最佳。利用扫描电镜、能量色散x射线光谱、傅里叶变换红外光谱和x射线衍射进行表征,证实了生物吸附剂的形态和化学变化,表明镉离子与表面官能团成功结合。动力学分析表明,吸附过程符合准二级模型,化学吸附是主要吸附机理。等温线模型表明,Langmuir模型最能描述吸附过程,最大吸附容量为141.24 mg/g。热力学研究表明,该过程是自发的放热过程,温度越高,自发性越低。人工神经网络模型具有较强的预测精度(R2 = 0.989),实验结果与预测结果吻合较好。再生试验表明,经过8次循环后,Hypnea valentiae生物吸附剂的效率仍保持在原来的63.4 %,突出了其耐久性和重复使用的潜力。这些发现突出了Hypnea valentiae作为一种高效、可持续的镉修复生物吸附剂的潜力,为解决水系统中的重金属污染提供了可行的解决方案。
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