Advertisement

A Smart Home System Development

  • Vasyl LytvynEmail author
  • Victoria Vysotska
  • Nataliya Shakhovska
  • Vladyslav Mykhailyshyn
  • Mykola Medykovskyy
  • Ivan Peleshchak
  • Vitor Basto Fernandes
  • Roman Peleshchak
  • Serhii Shcherbak
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 1080)

Abstract

The intelligent system of a smart house, which is designed to create from any house, office, or building a smart room, was created in the overall process. Recent trends in technology development demonstrate that more and more things are being automated around us. Even ordinary things become «smarter» and open a new functional use. This has led to an increase in demand for solutions that can provide a convenient and secure way to manage such devices. Having analyzed the literary and Internet sources, it was discovered that there is a large number of analogy systems, which nevertheless have some differences. Taking into account the analysis, it was decided to distinguish the market share through the introduction of intellectual algorithms, namely, algorithmic face recognition, and decision support system for shortcut service. Such solutions are not offered by any of the representatives of analogues, which will allow to receive the market share without strict competition with other manufacturers. Analysis of the analogues made it possible to define their weaknesses and strengths. As a result the experience of analogues was used while the designing and development of the system, and a lot of problems were avoided. In addition, a complex analysis of the software product was conducted, which allowed to see design of its structure, modules and their interconnection in detail. A hierarchy of tasks was also built according to the level of processes importance. An optimal alternative was identified for allocating resources between the main processes in the operating system with the use of analytical hierarchy method. The optimal tools were chosen for the development of the system, which allowed to create a fast, reliable, optimized and user-friendly system with a comfortable mobile and web-based user interfaces.

Keywords

Smart house User interface Intelligent device Control panel Intelligent system Internet of Things Mobile communication networks Smart house system System analysis Convolutional neural network Decision support system Intellectual building Apple Home Kit Analytical hierarchy method 

References

  1. 1.
    Kok, K., et al.: Smart houses for a smart grid. In: International Conference and Exhibition on Electricity Distribution-Part 1, pp. 1–4 (2009)Google Scholar
  2. 2.
    Shakeri, M., et al.: An intelligent system architecture in home energy management systems (HEMS) for efficient demand response in smart grid. Energy Build. 138, 154–164 (2017)CrossRefGoogle Scholar
  3. 3.
    Sun, Q., et al.: A multi-agent-based intelligent sensor and actuator network design for smart house and home automation. J. Sens. Actuator Netw. 2, 557–588 (2013)CrossRefGoogle Scholar
  4. 4.
    Nascimento, G., Ribeiro, M., Cerf, L., Cesário, N., Kaytoue, M., Raïssi, C., Meira, W.: Modeling and analyzing the video game live-streaming community. In: Latin American Web Congress, pp. 1–9 (2014)Google Scholar
  5. 5.
    Lypak, H., Rzheuskyi, A., Kunanets, N., Pasichnyk, V: Formation of a consolidated information resource by means of cloud technologies. In: International Scientific-Practical Conference on Problems of Infocommunications Science and Technology (2018)Google Scholar
  6. 6.
    Rzheuskyi, A., Kunanets, N., Stakhiv, M.: Recommendation system: virtual reference. In: 13th International Scientific and Technical Conference on Computer Sciences and Information Technologies (CSIT), pp. 203–206 (2018)Google Scholar
  7. 7.
    Kaminskyi, R., Kunanets, N., Rzheuskyi, A.: Mathematical support for statistical research based on informational technologies. In: CEUR Workshop Proceedings, vol. 2105, pp. 449–452 (2018)Google Scholar
  8. 8.
    Obermaier, J., Hutle, M.: Analyzing the security and privacy of cloud-based video surveillance systems. In: Proceedings of the 2nd ACM International Workshop on IoT Privacy, Trust, and Security, pp. 22–28 (2016)Google Scholar
  9. 9.
    Xu, D., Wang, R., Shi, Y.Q.: Data hiding in encrypted H.264/AVC video streams by codeword substitution. IEEE Trans. Inf. Forensics Secur. 9(4), 596–606 (2014)Google Scholar
  10. 10.
    Saxena, M., Sharan, U., Fahmy, S.: Analyzing video services in web 2.0: a global perspective. In: Proceedings of the 18th International Workshop on Network and Operating Systems Support for Digital Audio and Video, pp. 39–44 (2008)Google Scholar
  11. 11.
    Brône, G., Oben, B., Goedemé, T.: Towards a more effective method for analyzing mobile eye-tracking data: integrating gaze data with object recognition algorithms. In: International Workshop on Pervasive Eye Tracking & Mobile Eye-Based Interaction, pp. 53–56 (2011)Google Scholar
  12. 12.
    Reibman, A.R., Sen, S., Van der Merwe, J.: Analyzing the spatial quality of internet streaming video. In: Proceedings of International Workshop on Video Processing and Quality Metrics for Consumer Electronics (2005)Google Scholar
  13. 13.
    Perniss, P.: Collecting and analyzing sign language data: video requirements and use of annotation software. In: Research Methods in Sign Language Studies, pp. 56–73 (2015)Google Scholar
  14. 14.
    Tran, B.Q.: U.S. Patent No. 8,849,659. U.S. Patent and Trademark Office, Washington, DC (2014)Google Scholar
  15. 15.
    Badawy, W., Gomaa, H.: U.S. Patent No. 9,014,429. U.S. Patent and Trademark Office, Washington, DC (2015)Google Scholar
  16. 16.
    Badawy, W., Gomaa, H.: U.S. Patent No. 8,630,497. U.S. Patent and Trademark Office, Washington, DC (2014)Google Scholar
  17. 17.
    Golan, O., Dudovich, B., Daliyot, S., Horovitz, I., Kiro, S.: U.S. Patent No. 8,885,047. U.S. Patent and Trademark Office, Washington, DC (2014)Google Scholar
  18. 18.
    Chambers, C.A., Gagvani, N., Robertson, P., Shepro, H.E.: U.S. Patent No. 8,204,273. U.S. Patent and Trademark Office, Washington, DC (2012)Google Scholar
  19. 19.
    Maes, S.H.: U.S. Patent No. 7,917,612. U.S. Patent and Trademark Office, Washington, DC (2011)Google Scholar
  20. 20.
    Peleshko, D., Ivanov, Y., Sharov, B., Izonin, I., Borzov, Y.: Design and implementation of visitors queue density analysis and registration method for retail video surveillance purposes. In: Data Stream Mining and Processing (DSMP), pp. 159–162 (2016)Google Scholar
  21. 21.
    Maksymiv, O., Rak, T., Peleshko, D.: Video-based flame detection using LBP-based descriptor: influences of classifiers variety on detection efficiency. Int. J. Intell. Syst. Appl. 9(2), 42–48 (2017)Google Scholar
  22. 22.
    Rusyn, B., Lutsyk, O., Lysak, O., Lukeniuk, A., Pohreliuk, L.: Lossless image compression in the remote sensing applications. In: DSMP, pp. 195–198 (2016)Google Scholar
  23. 23.
    Kravets, P.: The control agent with fuzzy logic. In: Perspective Technologies and Methods in MEMS Design, MEMSTECH 2010, pp. 40–41 (2010)Google Scholar
  24. 24.
    Babichev, S., Gozhyj, A., Kornelyuk, A., Litvinenko, V.: Objective clustering inductive technology of gene expression profiles based on SOTA clustering algorithm. Biopolym. Cell 33(5), 379–392 (2017)CrossRefGoogle Scholar
  25. 25.
    Nazarkevych, M., Klyujnyk, I., Nazarkevych, H.: Investigation the Ateb-Gabor filter in biometric security systems. In: Data Stream Mining and Processing, pp. 580–583 (2018)Google Scholar
  26. 26.
    Emmerich, M., Lytvyn, V., Yevseyeva, I., Fernandes, V.B., Dosyn, D., Vysotska, V.: Preface: modern Machine Learning Technologies and Data Science (MoMLeT&DS-2019). In: CEUR Workshop Proceedings, vol. 2386 (2019)Google Scholar
  27. 27.
    Vysotska, V., Burov, Y., Lytvyn, V., Demchuk, A.: Defining author’s style for plagiarism detection in academic environment. In: Proceedings of the 2018 IEEE 2nd International Conference on Data Stream Mining and Processing, DSMP 2018, pp. 128–133 (2018)Google Scholar
  28. 28.
    Lytvyn, V., Peleshchak, I., Vysotska, V., Peleshchak, R.: Satellite spectral information recognition based on the synthesis of modified dynamic neural networks and holographic data processing techniques. In: International Scientific and Technical Conference on Computer Sciences and Information Technologies (CSIT), pp. 330–334 (2018)Google Scholar
  29. 29.
    Su, J., Sachenko, A., Lytvyn, V., Vysotska, V., Dosyn, D.: Model of touristic information resources integration according to user needs. In: International Scientific and Technical Conference on Computer Sciences and Information Technologies, pp. 113–116 (2018)Google Scholar
  30. 30.
    Rusyn, B., Vysotska, V., Pohreliuk, L.: Model and architecture for virtual library information system. In: Computer Sciences and Information Technologies, CSIT, pp. 37–41 (2018)Google Scholar
  31. 31.
    Lytvyn, V., Sharonova, N., Hamon, T., Cherednichenko, O., Grabar, N., Kowalska-Styczen, A., Vysotska, V.: Preface: computational linguistics and intelligent systems (COLINS-2019). In: CEUR Workshop Proceedings, vol. 2362 (2019)Google Scholar
  32. 32.
    Burov, Y., Vysotska, V., Kravets, P.: Ontological approach to plot analysis and modeling. In: CEUR Workshop Proceedings, vol. 2362, pp. 22–31 (2019)Google Scholar
  33. 33.
    Vysotska, V., Lytvyn, V., Burov, Y., Berezin, P., Emmerich, M., Basto Fernandes V.: Development of information system for textual content categorizing based on ontology. In: CEUR Workshop Proceedings, vol. 2362, pp. 53–70 (2019)Google Scholar
  34. 34.
    Lytvyn, V., Vysotska, V., Kuchkovskiy, V., Bobyk, I., Malanchuk, O., Ryshkovets, Y., Pelekh, I., Brodyak, O., Bobrivetc, V., Panasyuk, V.: Development of the system to integrate and generate content considering the cryptocurrent needs of users. Eastern Eur. J. Enterp. Technol. 1(2–97), 18–39 (2019)Google Scholar
  35. 35.
    Lytvyn, V., Kuchkovskiy, V., Vysotska, V., Markiv, O., Pabyrivskyy, V.: Architecture of system for content integration and formation based on cryptographic consumer needs. In: Computer Sciences and Information Technologies, CSIT, pp. 391–395 (2018)Google Scholar
  36. 36.
    Lytvyn, V., Vysotska, V., Demchuk, A., Demkiv, I., Ukhanska, O., Hladun, V., Kovalchuk, R., Petruchenko, O., Dzyubyk, L., Sokulska, N.: Design of the architecture of an intelligent system for distributing commercial content in the internet space based on SEO-technologies, neural networks, and machine learning. Eastern Eur. J. Enterp. Technol. 2(2–98), 15–34 (2019)Google Scholar
  37. 37.
    Chyrun, L., Gozhyj, A., Yevseyeva, I., Dosyn, D., Tyhonov, V., Zakharchuk, M.: Web content monitoring system development. In: CEUR Workshop Proceedings, vol. 2362, pp. 126–142 (2019) Google Scholar
  38. 38.
    Bisikalo, O., Ivanov, Y., Sholota, V.: Modeling the phenomenological concepts for figurative processing of natural-language constructions. In: CEUR Workshop Proceedings, vol. 2362, pp. 1–11 (2019)Google Scholar
  39. 39.
    Babichev, S., Taif, M.A., Lytvynenko, V., Osypenko, V.: Criterial analysis of gene expression sequences to create the objective clustering inductive technology. In: IEEE 37th International Conference on Electronics and Nanotechnology, pp. 244–248 (2017)Google Scholar
  40. 40.
    Kazarian, A., Kunanets, N., Pasichnyk, V., Veretennikova, N., Rzheuskyi, A., Leheza, A., Kunanets, O.: Complex information e-science system architecture based on cloud computing model. In: CEUR Workshop Proceedings, vol. 2362, pp. 366–377 (2019)Google Scholar
  41. 41.
    Veres, O., Rishnyak, I., Rishniak, H.: Application of methods of machine learning for the recognition of mathematical expressions. In: CEUR Workshop Proceedings, vol. 2362, pp. 378–389 (2019)Google Scholar
  42. 42.
    Zdebskyi, P., Vysotska, V., Peleshchak, R., Peleshchak, I., Demchuk, A., Krylyshyn, M.: An application development for recognizing of view in order to control the mouse pointer. In: CEUR Workshop Proceedings, vol. 2386, pp. 55–74 (2019)Google Scholar
  43. 43.
    Lytvyn, V., Vysotska, V., Dosyn, D., Lozynska, O., Oborska, O.: Methods of building intelligent decision support systems based on adaptive ontology. In: Proceedings of the 2018 IEEE 2nd International Conference on Data Stream Mining and Processing, DSMP 2018, pp. 145–150 (2018)Google Scholar
  44. 44.
    Vysotska, V., Lytvyn, V., Burov, Y., Gozhyj, A., Makara, S.: The consolidated information web-resource about pharmacy networks in city. In: CEUR Workshop Proceedings, pp. 239–255 (2018)Google Scholar
  45. 45.
    Kravets, P.: The control agent with fuzzy logic, perspective technologies and methods. In: MEMS Design, MEMSTECH 2010, pp. 40–41 (2010)Google Scholar
  46. 46.
    Lytvyn, V., Vysotska, V., Rusyn, B., Pohreliuk, L., Berezin, P., Naum O.: Textual content categorizing technology development based on ontology. In: CEUR Workshop Proceedings, vol. 2386, pp. 234–254 (2019)Google Scholar
  47. 47.
    Lytvyn, V., Vysotska, V., Rzheuskyi, A.: Technology for the psychological portraits formation of social networks users for the IT specialists recruitment based on big five, NLP and big data analysis. In: CEUR Workshop Proceedings, vol. 2392, pp. 147–171 (2019)Google Scholar
  48. 48.
    Vysotska, V., Burov, Y., Lytvyn, V., Oleshek, O.: Automated monitoring of changes in web resources. In: Lecture Notes in Computational Intelligence and Decision Making, vol. 1020, pp. 348–363 (2020)Google Scholar
  49. 49.
    Demchuk, A., Lytvyn, V., Vysotska, V., Dilai, M.: Methods and means of web content personalization for commercial information products distribution. In: Lecture Notes in Computational Intelligence and Decision Making, vol. 1020, pp. 332–347 (2020)Google Scholar
  50. 50.
    Vysotska, V., Mykhailyshyn, V., Rzheuskyi, A., Semianchuk, S.: System development for video stream data analyzing. In: Lecture Notes in Computational Intelligence and Decision Making, vol. 1020, pp. 135–331 (2020)Google Scholar
  51. 51.
    Lytvynenko, V., Wojcik, W., Fefelov, A., Lurie, I., Savina, N., Voronenko, M., et al.: Hybrid methods of GMDH-neural networks synthesis and training for solving problems of time series forecasting. In: Lecture Notes in Computational Intelligence and Decision Making, vol. 1020, pp. 513–531 (2020)Google Scholar
  52. 52.
    Babichev, S., Durnyak, B., Pikh, I., Senkivskyy, V.: An evaluation of the objective clustering inductive technology effectiveness implemented using density-based and agglomerative hierarchical clustering algorithms. In: Lecture Notes in Computational Intelligence and Decision Making, vol. 1020, pp. 532–553 (2020)Google Scholar
  53. 53.
    Bidyuk, P., Gozhyj, A., Kalinina, I.: Probabilistic inference based on LS-method modifications in decision making problems. In: Lecture Notes in Computational Intelligence and Decision Making, vol. 1020, pp. 422–433 (2020)Google Scholar
  54. 54.
    Chyrun, L., Chyrun, L., Kis, Y., Rybak, L.: Automated information system for connection to the access point with encryption WPA2 enterprise. In: Lecture Notes in Computational Intelligence and Decision Making, vol. 1020, pp. 389–404 (2020)Google Scholar
  55. 55.
    Kis, Y., Chyrun, L., Tsymbaliak, T., Chyrun, L.: Development of system for managers relationship management with customers. In: Lecture Notes in Computational Intelligence and Decision Making, vol. 1020, pp. 405–421 (2020)Google Scholar
  56. 56.
    Chyrun, L., Kowalska-Styczen, A., Burov, Y., Berko, A., Vasevych, A., Pelekh, I., Ryshkovets, Y.: Heterogeneous data with agreed content aggregation system development. In: CEUR Workshop Proceedings, vol. 2386, pp. 35–54 (2019)Google Scholar
  57. 57.
    Chyrun, L., Burov, Y., Rusyn, B., Pohreliuk, L., Oleshek, O., Gozhyj, A., Bobyk, I.: Web resource changes monitoring system development. In: CEUR Workshop Proceedings, vol. 2386, pp. 255–273 (2019)Google Scholar
  58. 58.
    Gozhyj, A., Chyrun, L., Kowalska-Styczen, A., Lozynska, O.: Uniform method of operative content management in web systems. In: CEUR Workshop Proceedings, vol. 2136, pp. 62–77 (2018)Google Scholar
  59. 59.
    Veres, O., Rusyn, B., Sachenko, A., Rishnyak, I.: Choosing the method of finding similar images in the reverse search system. In: CEUR Workshop Proceedings, vol. 2136, pp. 99–107 (2018)Google Scholar
  60. 60.
    Mukalov, P., Zelinskyi, O., Levkovych, R., Tarnavskyi, P., Pylyp, A., Shakhovska, N.: Development of system for auto-tagging articles, based on neural network. In: CEUR Workshop Proceedings, vol. 2362, pp. 106–115 (2019)Google Scholar
  61. 61.
    Basyuk, T.: The main reasons of attendance falling of internet resource. In: Proceedings of the X-th International Conference on Computer Science and Information Technologies, CSIT 2015, pp. 91–93 (2015)Google Scholar
  62. 62.
    Rzheuskyi, A., Gozhyj, A., Stefanchuk, A., Oborska, O., Chyrun, L., Lozynska, O., Mykich, K., Basyuk, T.: Development of mobile application for choreographic productions creation and visualization. In: CEUR Workshop Proceedings, vol. 2386, pp. 340–358 (2019)Google Scholar
  63. 63.
    Sachenko, S., Pushkar, M., Rippa, S.: Intellectualization of accounting system. In: IEEE International Workshop on Intelligent Data Acquisition and Advanced Computing Systems: Technology and Applications, Dortmund, Germany, pp. 536–538, 6–8 September 2007Google Scholar
  64. 64.
    Sachenko, S., Rippa, S., Krupka, Y.: Pre-conditions of ontological approaches application for knowledge management in accounting. In: IEEE International Workshop on Intelligent Data Acquisition and Advanced Computing Systems: Technology and Applications, pp. 605–608 (2009)Google Scholar
  65. 65.
    Sachenkom, S., Lendyuk, T., Rippa, S.: Simulation of computer adaptive learning and improved algorithm of pyramidal testing. In: International Conference on Intelligent Data Acquisition and Advanced Computing Systems (IDAACS), vol. 2, pp. 764-770 (2013)Google Scholar
  66. 66.
    Sachenko, S., Lendyuk, T., Rippa, S., Sapojnyk, G.: Fuzzy rules for tests complexity changing for individual learning path construction. In: Intelligent Data Acquisition and Advanced Computing Systems: Technology and Applications, pp. 945–948 (2015)Google Scholar

Copyright information

© Springer Nature Switzerland AG 2020

Authors and Affiliations

  1. 1.Lviv Polytechnic National UniversityLvivUkraine
  2. 2.Silesian University of TechnologyGliwicePoland
  3. 3.University Institute of LisbonLisbonPortugal
  4. 4.Ivan Franko Drohobych State Pedagogical UniversityDrohobychUkraine
  5. 5.EPAMLvivUkraine

Personalised recommendations