Alhakami Hosam, Umar Muhammad, Sulaiman Muhammad, Alhakami Wajdi, Baz Abdullah
Department of Computer Science, College of Computer and Information Systems, Umm Al-Qura University, Makkah 21955, Saudi Arabia.
Department of Mathematics, Abdul Wali Khan University, Mardan 23200, Pakistan.
Entropy (Basel). 2022 Oct 22;24(11):1511. doi: 10.3390/e24111511.
Most plant viral infections are vector-borne. There is a latent period of disease inside the vector after obtaining the virus from the infected plant. Thus, after interacting with an infected vector, the plant demonstrates an incubation time before becoming diseased. This paper analyzes a mathematical model for persistent vector-borne viral plant disease dynamics. The backpropagated neural network based on the Levenberg-Marquardt algorithm (NN-BLMA) is used to study approximate solutions for fluctuations in natural plant mortality and vector mortality rates. A state-of-the-art numerical technique is utilized to generate reference data for obtaining surrogate solutions for multiple cases through NN-BLMA. Curve fitting, regression analysis, error histograms, and convergence analysis are used to assess accuracy of the calculated solutions. It is evident from our simulations that NN-BLMA is accurate and reliable.
大多数植物病毒感染是由媒介传播的。从受感染植物获取病毒后,病毒在媒介体内有一个疾病潜伏期。因此,与受感染媒介接触后,植物在发病前会有一段潜伏期。本文分析了一种用于持久性媒介传播植物病毒病动态的数学模型。基于Levenberg-Marquardt算法的反向传播神经网络(NN-BLMA)用于研究自然植物死亡率和媒介死亡率波动的近似解。利用一种先进的数值技术生成参考数据,以便通过NN-BLMA获得多个案例的替代解。使用曲线拟合、回归分析、误差直方图和收敛分析来评估计算解的准确性。从我们的模拟中可以明显看出,NN-BLMA是准确可靠的。