Difference between revisions of "Hiryuu Analysis"

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==<div style="background: #A4A4A4; line-height: 0.3em; font-family:Roboto;  border-left: #848484 solid 15px;"><div style="border-left: #FFFFFF solid 5px; padding:15px;font-size:15px;"><font color= "#ffffff"><strong>Geospatial</strong></font></div></div>==
 
==<div style="background: #A4A4A4; line-height: 0.3em; font-family:Roboto;  border-left: #848484 solid 15px;"><div style="border-left: #FFFFFF solid 5px; padding:15px;font-size:15px;"><font color= "#ffffff"><strong>Geospatial</strong></font></div></div>==
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<h3>Simple Plot</h3>
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<h3>Neighbouring Polygons Patterns</h3>
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We observed that neighbouring cities around a city with a high number of inbounds tended to have higher inbounds than others as well. So hence we suspect that neigbouring inbound might be affected. Spatial randomness analysis will be relevant here, specifically Moran I and Geary’s C. We suspect that with time when we input failure points into this map and perform the same analysis, we might be able to find some pattern. Such that areas that tend to have high failures have neighbouring cities that also have failures. And possible explanations could be the transport mode, or transport companies that are assigned to handle these areas. These kind of information is rather useful to our sponsor.

Revision as of 19:12, 21 February 2017

Current Project

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Home

About Us

Project Overview

Findings

Project Management

Documentations

Data Preparation Analysis

Exploratory

Time-Series

Clustering

Geospatial

Simple Plot

Neighbouring Polygons Patterns

We observed that neighbouring cities around a city with a high number of inbounds tended to have higher inbounds than others as well. So hence we suspect that neigbouring inbound might be affected. Spatial randomness analysis will be relevant here, specifically Moran I and Geary’s C. We suspect that with time when we input failure points into this map and perform the same analysis, we might be able to find some pattern. Such that areas that tend to have high failures have neighbouring cities that also have failures. And possible explanations could be the transport mode, or transport companies that are assigned to handle these areas. These kind of information is rather useful to our sponsor.