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Technische Universität Braunschwei
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4.4 Review of Current State of Rese
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Index of Tables Table 2-1: Error of
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1 Introduction 1.1 Initial Position
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2 Sensor Based Temperature Monitori
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compressor. They are served by a ce
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the specified value, it works very
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of this, over a hundred irregular p
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a centralized one. An isolated appl
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Figure 2-8: Lack of Information Pro
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Moreover, the fridge’s filling le
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store this kind of data but only of
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3 Current Monitoring Systems The la
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device’s condition. Especially th
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a converter that is also available
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To indicate important events within
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1. Display stored data in table for
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This way of visualizing data is the
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free text. Moreover it is possible
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dependent limit and delay settings,
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Aside from these functions, the kin
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1. Temperature verification in retr
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alarms by the use of additionally a
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The third mentioned Centron Environ
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4 Current State of Research As alre
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even this improvement is still face
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Another current approach is regress
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S o n 2 = ∑ Yi −Yi n −1 i= 2
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This algorithm returns an upper and
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• Critical values • Pre-warning
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5 Possible and Promising Ways of Da
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could be: “The mean increase of a
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The mode is the most frequent value
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Figure 5-1: Two Samples of Regressi
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5.4.2 The Major Problems of Regress
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The next section will introduce tim
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explained in section 5.4. If such a
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pictured in Formula 5-12. Beside a
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P ( m) = P ( r ) ⋅ P ( m−r ) wi
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But the greatest problem is again t
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clustering as well as an analysis o
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- Page 95 and 96: 6.2 Case Study The UMC St. Radboud
- Page 97 and 98: Figure 6-3: Maximum Values at Dayti
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- Page 111 and 112: 7 Summary Cooling devices within me
- Page 113 and 114: Bibliography Books and Articles: [B
- Page 115 and 116: [Wittenberg98] Reinhard Wittenberg,
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- Page 121 and 122: Appendix 2 - Implementation of Stat
- Page 123 and 124: dailydate = [dailydate; floor(date(
- Page 125 and 126: %Count Dooropenings per Day dailydo
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- Page 129 and 130: print('-dtiff', strcat(path, 'Graph
- Page 131 and 132: ar([dailydate(1):dailydate(length(s
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- Page 137 and 138: %Contains [Duration, Number of Occu
- Page 139 and 140: disp(strcat('Dooropening