• Medientyp: Dissertation; E-Book; Elektronische Hochschulschrift
  • Titel: A System Architecture for the Monitoring of Continuous Phenomena by Sensor Data Streams
  • Beteiligte: Lorkowski, Peter [VerfasserIn]
  • Erschienen: Universität Osnabrück: osnaDocs, 2019-03-15
  • Sprache: Englisch
  • Schlagwörter: Kriging-Varianz ; sensor data stream ; kriging variance ; 31.73 - Mathematische Statistik ; computational effciency ; Sensordatenströme ; Berechnungseffzienz ; K70 - Statistical inference ; 38.99 - Geowissenschaften: Sonstiges ; spatio-temporal interpolation ; Umweltmonitoring ; I.6.6 - Simulation Output Analysis ; G.3 - PROBABILITY AND STATISTICS ; 62-04 - Explicit machine computation and programs ; Spatio-temporale Interpolation ; environmental monitoring
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  • Beschreibung: The monitoring of continuous phenomena like temperature, air pollution, precipitation, soil moisture etc. is of growing importance. Decreasing costs for sensors and associated infrastructure increase the availability of observational data. These data can only rarely be used directly for analysis, but need to be interpolated to cover a region in space and/or time without gaps. So the objective of monitoring in a broader sense is to provide data about the observed phenomenon in such an enhanced form. Notwithstanding the improvements in information and communication technology, monitoring always has to function under limited resources, namely: number of sensors, number of observations, computational capacity, time, data bandwidth, and storage space. To best exploit those limited resources, a monitoring system needs to strive for efficiency concerning sampling, hardware, algorithms, parameters, and storage formats. In that regard, this work proposes and evaluates solutions for several problems associated with the monitoring of continuous phenomena. Synthetic random fields can serve as reference models on which monitoring can be simulated and exactly evaluated. For this purpose, a generator is introduced that can create such fields with arbitrary dynamism and resolution. For efficient sampling, an estimator for the minimum density of observations is derived from the extension and dynamism of the observed field. In order to adapt the interpolation to the given observations, a generic algorithm for the fitting of kriging parameters is set out. A sequential model merging algorithm based on the kriging variance is introduced to mitigate big workloads and also to support subsequent and seamless updates of real-time models by new observations. For efficient storage utilization, a compression method is suggested. It is designed for the specific structure of field observations and supports progressive decompression. The unlimited diversity of possible configurations of the features above calls for an integrated approach for ...
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