Deployment and Tech Transfer of a Street-level Flooding Platform: Sensing and Data Sharing for Urban Accessibility and Resilience

Overview

Of the myriad impacts that are predicted to accompany climate change, flooding is expected to have an outsized influence on public health, infrastructure, and mobility in urban areas. In New York City, for example, sea-level rise and an increase in the occurrence of high-intensity rainstorms have led to a dramatic increase in flood risk, particularly in low-lying and coastal neighborhoods. The physical presence of standing water on streets and sidewalks can impede mobility and restrict access to transportation. Additionally, urban floodwater contains a diverse array of contaminants, including industrial and household chemicals, fuels, and sewage., Access to real-time information on flooding can improve resiliency and efficiency by allowing residents to identify navigable transportation routes and make informed decisions to avoid exposure to floodwater contaminants. However, very little data exist on the frequency and extent of urban surface flooding, and there is an unmet need for hyperlocal information on the presence and depth of street-level floodwater. This unmet need for data from urban floods motivated the development of the FloodSense project in early 2020, with the objective of developing a platform to provide real-time, street-level flood information – including the presence, frequency, and severity of local surface flood events – to a range of stakeholders, including policymakers, government agencies, citizens, emergency response teams, community advocacy groups, and researchers.

The FloodSense project began in 2020 with funding from the C2SMART Transportation Research Center, with overarching goals to (1) design, build, deploy, and assess robust, low-cost sensors in diverse urban environments to track street-level flood occurrence and depth, and ultimately, (2) to implement an interface to communicate the data to a range of stakeholders. Specific tasks were the following:

  • Task 1- Sensor solution discovery and evaluation (including evaluation of sensor, power, connectivity, and data storage and delivery solutions) 
  • Task 2 – Prototype deployment, assessment, and initial data collection
  • Task 3 – Development of an online interface for data communication

Research Objectives & Deliverables

Based on our experience conducting the work described above, and conversations with various stakeholders, we have identified three objectives required for larger-scale deployment of a flood sensor network that provides actionable data for improved mobility and resiliency across stakeholder categories:

Objective 1 – Expand the ultrasonic flood sensor network

Given our successful pilot sensor deployment, we plan to expand the number of ultrasonic flood sensors in the network. The deployment locations will be decided in consultation with NYC agencies and community partners, in an effort to fulfill a range of data needs.

Objective 2 – Develop a public-facing data dashboard to transfer flood data to a range of stakeholders 

The outcome of this objective will be an easily accessible, public-facing online portal that provides flood sensor data in a manner that meets the needs of various stakeholders, and incorporates additional data streams such as community reported flood events, rainfall levels, 311 flooding complaints, and social media feeds.

Objective 3 – Evaluate the feasibility of new flood sensor modalities

The current sensor configuration involves mounting the unit on a U-post, which limits flood detection to water levels that rise over the curb cut and onto the sidewalk (i.e., floods must be greater than approximately 7 inches in depth). This is because the ultrasonic sensor can only measure water level directly underneath the sensor, and U-posts are always installed on sidewalks. While this remains important information, additional sensor modalities are required to measure floods that are confined to roadways. We plan to evaluate the feasibility of additional sensor types that can either utilize different urban infrastructure for sensor deployment (e.g., sewer grates in the roadway), or alternate sensor technologies (e.g., cameras employing edge computer-vision) to measure flood extent more remotely.

Personnel

Elizabeth Henaff

Elizabeth Henaff

PRINCIPAL INVESTIGATOR

Tega Brain

Tega Brain

CO-PRINCIPAL INVESTIGATOR

Andrea Silverman

Andrea Silverman

PRINCIPAL INVESTIGATOR

Charlie Mydlarz

CO-PRINCIPAL INVESTIGATOR

Jatin Palchuri

STUDENT RESEARCHER

Praneeth Challagonda

Praneeth Challagonda

STUDENT RESEARCHER

Principal InvestigatorElizabeth Henaff
Funding Source(1) Award from New York State Empire State Development Smart Cities Partnership ($23,989 cost-share); (2) NYU Tandon assistance for graduate student researchers ($18,720); (3) NYU Tandon in-kind for F&A ($7,207)
Total Project Cost$139,879
USDOT Award #69A3551747124 
Implementation of Research OutcomesOur research outcomes will consist of: (1) an expanded deployment of flood sensors at flood-prone sites around Gowanus and Jamaica Bay (co-located with our CUNY partner sensors); (2) a community facing data dashboard, and (3) a report on the feasibility of additional flood sensing modalities.
Impacts/Benefits of Implementation

Flood data will be collected and reported in a manner that meets stakeholder needs. The identified needs include the following: City agency stakeholders – data for resiliency planning, transportation planning, benchmarking the current extent of flooding, validating anecdotal evidence of flood extent (e.g., community reports and 311 flood complaints), and validating complex hydrological models NYC has developed for predicting future flooding. Researcher stakeholders – flood alerts to indicate when to visit sites to collect water samples for research on floodwater contaminants, and data to develop flood forecasting models. Community stakeholders – data for advocacy, for contributing to environmental literacies, and for day-to-day decision-making relating to living with water.

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