Ibrahim Soud Khalil, Albadr Rafid Jihad, Sur Dharmesh, Yadav Anupam, Menon Soumya V, Shit Debasish, Supriya S, Panigrahi Rajashree, Mohammed Taher Waam, Alwan Mariem, Jasem Jawad Mahmood, Mushtaq Hiba
Department of Anesthesia Techniques, Health and Medical Techniques College, Alnoor University, Nineveh, Iraq.
Ahl Al Bayt University, Kerbala, Iraq.
Sci Rep. 2025 Jul 1;15(1):21539. doi: 10.1038/s41598-025-06552-2.
In this work the Artificial Neural Network (ANN) and the Perturbed Hard Sphere Chain (PHSC) equation of state (EoS) have been utilized to estimate the osmotic coefficient, activity coefficient, and water activity of aqueous sugar solutions containing glucose, fructose, fucose, xylose, maltose, mannitol, mannose, sorbitol, xylitol, galactose, lactose, ribose, arabinose, and sucrose. The PHSC model parameters have been adjusted using the osmotic coefficient experimental data. Then, the water activity and sugar activity coefficient were predicted. In the case of the ANN approach, six variables containing critical temperature (T), critical volume (V), molality, temperature, melting temperature (T), and melting enthalpy (∆H) of sugars have been considered as input layer. As well, 32 neurons are considered in one hidden layer. The Group Contribution (GC) method was utilized to estimate the critical properties of sugars. The training correlating coefficient (R), and the Mean Square Error (MSE) have been obtained 0.999 and 2.06 × 10, respectively. The average relative deviation (ARD) value of osmotic coefficient, water activity, and sugar activity coefficient using the PHSC EoS and the ANN + GC model have been obtained 0.43%, 0.12%, 0.66%, and 2.1%, 0.89%,1.65%, respectively. The model's performance has been evaluated using the prediction of sugar solubilities in water. The results show that the ANN + GC and PHSC model can predict the solubility data satisfactory. The ANN + GC method can be used to predict the thermodynamic properties of a new aqueous sugar solution using the molecular structure in the absence of experimental data.
在本研究中,人工神经网络(ANN)和微扰硬球链(PHSC)状态方程(EoS)已被用于估算含有葡萄糖、果糖、岩藻糖、木糖、麦芽糖、甘露醇、甘露糖、山梨醇、木糖醇、半乳糖、乳糖、核糖、阿拉伯糖和蔗糖的糖水溶液的渗透系数、活度系数和水活度。PHSC模型参数已根据渗透系数实验数据进行了调整。然后,预测了水活度和糖活度系数。在ANN方法中,包含糖的临界温度(T)、临界体积(V)、质量摩尔浓度、温度、熔化温度(T)和熔化焓(∆H)的六个变量被视为输入层。同样,在一个隐藏层中考虑了32个神经元。采用基团贡献(GC)方法估算糖的临界性质。训练相关系数(R)和均方误差(MSE)分别为0.999和2.06×10。使用PHSC状态方程和ANN+GC模型得到的渗透系数、水活度和糖活度系数的平均相对偏差(ARD)值分别为0.43%、0.12%、0.66%和2.1%、0.89%、1.65%。通过预测糖在水中的溶解度对模型性能进行了评估。结果表明,ANN+GC和PHSC模型能够令人满意地预测溶解度数据。在没有实验数据的情况下,ANN+GC方法可用于根据分子结构预测新型糖水溶液的热力学性质。