A Comparative Study of Algorithms of Software Effort Estimation for the Robotic and Communication Systems Based on Improved Accuracy

E. H. Salman, I. Zayer, Shayma Naif Hassan
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Abstract

The engineering systems of robotics, communication networks, and electronics status, require a software effort estimation to decrease the error of effort and cost estimation since huge sizes of datasets are used in these systems. It supports the different tasks in scheduling, planning, and so on yet it is difficult to estimate the necessary duration to fix a required task. However, the computational complexity level is increased with improving of abovementioned systems. In this paper, several software effort estimation techniques are considered for mechatronics and communications systems. These techniques are artificial neural networks, Fuzzy logic rule, genetic algorithm, and others. The analyses and investigations revealed that the hybrid technique is the best one, which is described as the statistical representations cascaded to artificial neural networks. the hybrid technique has a higher accuracy with desirable complexity.
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基于提高精度的机器人与通信系统软件工作量估算算法的比较研究
机器人、通信网络和电子状态的工程系统需要一个软件工作量估算来减少工作量和成本估算的误差,因为这些系统中使用了大量的数据集。它在调度、计划等方面支持不同的任务,但很难估计修复所需任务所需的持续时间。然而,随着系统的改进,其计算复杂度也随之提高。本文对机电和通信系统的软件工作量估算技术进行了研究。这些技术包括人工神经网络、模糊逻辑规则、遗传算法等。分析和研究表明,将统计表示级联到人工神经网络的混合方法是最好的方法。混合技术具有较高的精度和较好的复杂度。
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