Page 78 - 《软件学报》2021年第7期
P. 78

1996                                     Journal of Software  软件学报 Vol.32, No.7,  July 2021

                 [5]    Luckey M, Thanos C, Gerth C, Engels G. Multi-staged quality assurance for self-adaptive systems. In: Proc. of the 6th Int’l Conf.
                     on Self-adaptive & Self-organizing Systems Workshops. IEEE, 2012. 111–118. [doi: 10.1109/SASOW.2012.28]
                 [6]    Gabor T, Kiermeier M, Sedlmeier A, Kempter B, Klein C, Sauer H, Schmid R, Wieghardt J. Adapting quality assurance to adaptive
                     systems: The scenario coevolution paradigm. In: Proc. of the Int’l Symp. on Leveraging Applications of Formal Methods (ISOLA
                     2018). Cham: Springer-Verlag, 2018. 137–157. [doi: 10.1007/978-3-030-03424-5_10]
                 [7]    Wang ZY, Wang T, Zhang WB, Chen NJ, Zuo C. Fault diagnosis for microservices with execution trace monitoring. Ruan Jian Xue
                     Bao/Journal of Software, 2017,28(6):1435–1454  (in Chinese with  English abstract).  http://www.jos.org.cn/1000-9825/5223.htm
                     [doi: 10.13328/j.cnki.jos.005223]
                 [8]    Macias-Escriva FD, Haber R, Toro RD, Hernandez V. Self-adaptive systems: A survey of current approaches, research challenges
                     and applications. Expert Systems with Applications, 2013,40(18):7267–7279. [doi: 10.1016/j.eswa.2013.07.033]
                 [9]    Rodrigues A, Vogel T, Pelliccione P. A learning approach to enhance assurances for real-time self-adaptive systems. In: Proc. of the
                     13th Int’l Symp. on Software Engineering for Adaptive and Self-managing Systems. ACM, 2018. 206–216. [doi: 10.1145/3194133.
                     3194147]
                [10]    Chaari T, Fakhfakh K. Semantic modeling and reasoning at runtime for autonomous systems engineering. In: Proc. of the 9th Int’l
                     Conf.  on Ubiquitous  Intelligence and Computing and  the  9th  Int’l Conf.  on Autonomic and Trusted Computing.  IEEE,  2012.
                     415–422. [doi: 10.1109/UIC-ATC.2012.82]
                [11]    Baader F. Ontology-based  monitoring of dynamic systems. In: Proc. of  the 14th Int’l  Conf. on the Principles of  Knowledge
                     Representation and Reasoning. AAAI Publications, 2014. 678–681.
                [12]    Paola AD. An ontology-based autonomic system for ambient intelligence scenarios. In: Proc. of the Advances onto the Internet of
                     Things. Switzerland: Springer International Publishing, 2014. 1–17. [doi: 10.1007/978-3-319-03992-3_1]
                [13]    Yang QL,  Lü J, Li JL, Ma XX, Song W, Zou Y. Toward a fuzzy control-based approach to design of self-adaptive software. In:
                     Proc. of the 2nd Asia-Pacific Symp. on Internetware. 2010. 1–4. [doi: 10.1145/2020723.2020738]
                [14]    Wang  T,  Zhang  WB, Xu JW,  Wei J,  Zhong H. A survey of  fault detection for distributed software systems  with statistical
                     monitoring in cloud computing. Chinese Journal of Computers, 2017, 397–413 (in Chinese with English abstract). [doi: 10.11897/
                     SP.J.1016.2017.00397]
                [15]    Zhang J, Qi MC, Li B. Hybrid diagnosis of fault tree and Bayesian network in BIW automatic welding production line. In: Proc. of
                     the Advanced Information Management, Communicates, Electronic & Automation Control Conf. IEEE, 2016. 297–300. [doi: 10.
                     1109/IMCEC.2016.7867220]
                [16]    Chen  HX,  Ren  Y, Yu SX. Fuzzy fault tree  analysis on temperature  control system  of  conventional rocket propellant.  Yuhang
                     Xuebao/Journal of  Astronautics, 2017,38(1):104–108 (in Chinese with English abstract).  [doi:  10.3873/j.issn.1000-1328.2017.
                     01.014]
                [17]    Astekin M, Zengin H, Sözer H. DILAF: A framework for distributed analysis of large-scale system logs for anomaly detection.
                     Software: Practice and Experience, 2019,49(2):153–170. [doi: 10.1002/spe.2653]
                [18]    He S, Lin Q, Lou JG, Zhang H, Zhang D. Identifying impactful service system problems via log analysis. In: Proc. of the 26th ACM
                     Joint Meeting. ACM, 2018. 60–70. [doi: 10.1145/3236024.3236083]
                [19]    Li ZF, Pang HJ. Study on improved genetic algorithm based real-time detection system of network failure data. Modern Electronics
                     Technique, 2018,41(13):13841,146 (in Chinese with English abstract). [doi: 10.16652/j.issn.1004-373x.2018.13.031]
                [20]    Qu CY,  Liu XQ,  Xin P. Substation  equipment failure state identify  and prediction  model based on hadoop. Software  Guide,
                     2015(3):61–63 (in Chinese with English abstract). [doi: 10.11907/rjdk.1431012]
                [21]    Huang XD, Wang BY, Liu K, Liu TG. An event recognition scheme aiming to improve both accuracy and efficiency in optical fiber
                     perimeter security system. Journal of Lightwave Technology, 2020,38(20):5783–5790.
                [22]    Yang YY. Automatic fault diagnosis approach based on similarity graph in cloud computing. Computer Measurement & Control.
                     2014,22(12):3877–3880 (in Chinese with English abstract). [doi: 10.3969/j.issn.1671-4598.2014.12.011]
                [23]    Shevtsov S, Berekmeri M,  Weyns D, Maggio  M. Control-theoretical software adaptation: A  systematic  literature review. IEEE
                     Trans. on Software Engineering, 2018,44(8):784–810. [doi: 10.1109/TSE.2017.2704579]
   73   74   75   76   77   78   79   80   81   82   83