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Tmor-Da: Statistical analysis of human activities.

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dataset
posted on 2020-08-13, 15:46 authored by YEE KEE KU, YEE KEE KU
Graph of time-series plots; `temporal occupied space [TOS]' area (stack area) and no. of people (bar chart) for a day, in 5 zones of Tmor-Da. <div><br></div><div>Pearson correlation coefficient analyses the relationship between different types of people (and objects) with TOS domestic and TOS commercial, to find the highest plausible association between these two variables.<div><br></div><div>Introduce a novel method to calculate the human intensity and frequency on TOS. </div></div><div><br></div><div>Pearson correlation coefficient analyses the relationship between total human intensity value to porosity value, connectivity value (space syntax) and finally building height value , to find the highest plausible association between these variables.<br></div><div><br></div><div>Pearson correlation coefficient analyses the relationship between human activities (micro) to evolution of built forms (macro), thus answer the main research question. <br></div>

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    7020 - Architecture

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