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Development of Rule-Based Software Risk Assessment and Management Method with Fuzzy Inference System

机译:基于规则的模糊推理系统的基于规则的软件风险评估与管理方法的开发

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There is an enormous budget and financial plan in software development projects, and it is required that they take a huge investment to carry on. When looked at, the costs depend on the global substantial information about software development: in 1985, $150 billion; in 2010, $2 trillion; in 2015, $5 trillion; and in 2020, over $7 trillion. Additionally, on the first new days of 2021, a day-by-day Apple Store’s quantity has been approximately $500 million. In spite of the expenditures and the margins that are dramatically expanding and increasing each year, the phase of software development accomplishment is not high enough. In light of the “CHAOS” report arranged in 2015, just 17% of the software projects were finished in an opportune way, in the allotted financial plan, and as per the necessities. However, 53% of the software projects were finished in the long run or potentially over a spending plan as well as without satisfying the prerequisites precisely. In addition, software development projects were not completed and were dropped out as well in the ratio of 30%. Also, the “CHAOS” report published in 2020 has figured out that only 33% of the software projects were completed successfully all over the world. In order to cope with these unsuccessful and failure results, an effective method for software risk assessment and management has to be specified, designated, and applied. In this way, before causing trouble that has the power of preventing successful accomplishment of software development projects, software risks are able to be noticed and distinguished on time. In this study, a new and original rule set, which could be used and carried out effectively in software risk assessment and management, has been designed and developed based on the implementation of fuzzy approached technique integrated with machine learning algorithm—Adaptive Neuro-Fuzzy Inference System (ANFIS). By this approach and technique, machines (computers) are able to create several software risk rules not to be seen, not to be recognized, and not to be told by human beings. In addition, this fuzzy inference approach aims to decrease risks in the software development process in order to increase the success rate of the software projects. Also, the experimental results of this approach show that rule-based software risk assessment and management method has a valid and accurate model with a high accuracy rate and low average testing error.
机译:软件开发项目中有一个巨大的预算和财务计划,需要采取巨额投资来进行。当看时,成本取决于全球关于软件开发的实质性信息:1985年,150亿美元; 2010年,2万亿美元; 2015年,5万亿美元;在2020年,超过7万亿美元。此外,在2021年的第一个新天,一天日的Apple Store的数量约为5亿美元。尽管有支出和每年大幅扩张和增加的利润率,但软件开发成就的阶段不够高。鉴于2015年安排的“混乱”报告,只有17%的软件项目在各种金融计划中以适当的方式完成,并根据必需品。然而,53%的软件项目在长期或可能在支出计划中完成,而且在不完全满足先决条件的情况下。此外,软件开发项目未完成,并以30%的比例销售。此外,2020年发布的“混乱”报告已经弄明白,只有33%的软件项目在世界各地成功完成。为了应对这些不成功和失败的结果,必须指定,指定和应用软件风险评估和管理的有效方法。通过这种方式,在造成遇到防止软件开发项目的力量的问题之前,能够注意到软件风险并按时凝视。在本研究中,基于模糊接近技术的实施,可以在软件风险评估和管理中有效地使用和原始规则集,这些规则集可以在软件风险评估和管理中实现和开发,并开发了模糊接近的技术与机器学习算法 - 自适应神经模糊推理系统(ANFIS)。通过这种方法和技术,机器(计算机)能够创建若干软件风险规则,不再被识别,而不是被人类讲述。此外,这种模糊推理方法旨在减少软件开发过程中的风险,以提高软件项目的成功率。此外,这种方法的实验结果表明,基于规则的软件风险评估和管理方法具有高精度率和低平均测试误差的有效和准确的模型。

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