ArcGIS REST Services Directory Login
JSON

Layer: Potential PEV Demand at Multifamily Properties (Percentile Rankings) (ID: 0)

Name: Potential PEV Demand at Multifamily Properties (Percentile Rankings)

Display Field: address

Type: Feature Layer

Geometry Type: esriGeometryPoint

Description: In 2018, the Mobile Source Air Pollution Reduction Review Committee (MSRC) commissioned the UCLA Luskin Center for Innovation (LCI) to identify locations within Southern California where investments in charging infrastructure could unlock latent demand for PEV ownership. LCI focused on two types of locations have higher than usual hurdles for installing charging equipment locations: workplaces and MUDs, such as apartments and condos. This spatial layer focuses on MUD properties and provides a score for ranking MUD parcels in the South Coast Air Basin according to the relative demand of building residents for PEV ownership, assuming barriers to chargers are removed. The score accounts for (a) the historical adoption rate of PEVs in each census tract, (b) the likelihood that PEVs are likely to belong to households of different income groups, and (c) the likelihood that those income groups are likely to live in a home of a certain value. The score is based on the average value of the unit within the MUD. Final scores are not weighted by the size of the MUD (i.e., the total number of units). MUDs will less than 4 units are excluded from this dataset altogether because residents at these properties are often able to charge using available 110/220 volt outlets with low-cost, portable Level 1 electric vehicle service equipment (EVSE). Data development/processing methodology:For a full documentation of methods, visit: https://innovation.luskin.ucla.edu/transportation/electric-vehicle-planning/Note: The propensity to purchase score metric is based in part on administrative data from the tax assessors offices of each of the four counties that form the SCAQMD. These data contain errors across several dimensions that can impact the final scores delivered by the propensity to purchase algorithm. While the authors have endeavored to identify and isolate errors, the large size of the parcel datasets makes exhaustive review impossible. While the authors believe that errors have been minimized, users are advised that some level of error is inevitable.

Service Item Id: 63e9d266709142dd9f4bdd90a4ee2f0e

Copyright Text: UCLA Luskin Center for Innovation

Default Visibility: true

MaxRecordCount: 1000

Supported Query Formats: JSON, geoJSON, PBF

Min Scale: 0

Max Scale: 0

Supports Advanced Queries: true

Supports Statistics: true

Has Labels: false

Can Modify Layer: true

Can Scale Symbols: false

Use Standardized Queries: true

Supports Datum Transformation: true

Extent:
Drawing Info: Advanced Query Capabilities:
HasZ: false

HasM: false

Has Attachments: false

HTML Popup Type: esriServerHTMLPopupTypeAsHTMLText

Type ID Field: null

Fields:
Supported Operations:   Query   Query Attachments   Query Analytic   Generate Renderer   Return Updates

  Iteminfo   Thumbnail   Metadata