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- Title
PARAMETER ESTIMATION SPACE FOR UNKNOWN INTERNAL EVOLUTION ON IOT DOMOTIC SYSTEMS.
- Authors
AGUILERA, R. CARREÑO; JUAREZ, J. J. MEDEL; CORONEL, S. L. GOMEZ
- Abstract
This paper describes the parameter estimation modeling concerning a domotic designer bot system with internet of things (IoT) assistance using the probabilistic operator based on the stochastic parameter estimation through the moments and the recursive conditions. Light, CCTV, presence, and temperature are IoT data monitored, shared, and accessed by the internet for a smart office designer performance that evolves based on historical web data. The relationship established by Wiener between covariance and variance found the parameter time evolution by observing through the time. The development is viewed in the visible results between non-recursive and recursive mathematical structures. In both cases, the convergence rate is based on probabilistic estimation, the functional error presents a high convergence rate which is viewed as an effect of the function of a density function. The estimate considered a non-invasive perspective, and it helps in different applications such as health diagnosis in humans and animals with internal problems, or systems which are unknown for internal evolution such as for IoT model adoption. Therefore, our objective is to propose a black box, inner approximation through the parameter estimation without a no invasive stochastic method based in Wiener approximation.
- Subjects
PARAMETER estimation; INTERNET of things; INTERNET access; BIOLOGICAL evolution
- Publication
Fractals, 2020, Vol 28, Issue 3, pN.PAG
- ISSN
0218-348X
- Publication type
Article
- DOI
10.1142/S0218348X20500668