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Tmor-Da: Statistical analysis of human activities.

Version 43 2020-08-13, 15:46
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dataset
posted on 2020-08-13, 15:46 authored by YEE KEE KUYEE KEE KU, YEE KEE KUYEE 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.

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.

Introduce a novel method to calculate the human intensity and frequency on TOS.

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.

Pearson correlation coefficient analyses the relationship between human activities (micro) to evolution of built forms (macro), thus answer the main research question.

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