Hours of Service Restart Study Plan Released

Congress directed the Federal Motor Carrier Safety Administration to analyze the operational, safety, health, and fatigue impacts of the restart provisions.

The Federal Motor Carrier Safety Administration has posted its study plan for a congressionally mandated study of the operational, safety, health, and fatigue impacts of the agency's hours-of-service restart provisions. The Virginia Tech Transportation Institute is the contractor conducting the study.

The plan explains how the research team will measure and compare the fatigue and safety performance levels of drivers who take two or more nighttime rest periods during their 34-hour restart break with drivers who take one nighttime rest period during their restart break. Congress directed FMCSA to conduct this Commercial Motor Vehicle Driver Restart Study in the Consolidated and Further Continuing Appropriations Act of 2015.

In it, FMCSA will compare five-month driver work schedules and assess operators' fatigue and safety critical events (such as crashes and near-crashes) between these two groups:

  • CMV drivers who operate under the hours of service restart provisions in effect between July 1, 2013, and Dec. 15, 2014.
  • CMV drivers who operate under the provisions as in effect on June 30, 2013.

The sample of drivers will be large enough to produce statistically significant results, will include drivers from small, medium, and large fleets across a variety of operations, and will include different sectors of the industry, such as flat-bed, refrigerated, tank, and dry-van. Safety critical events, driver fatigue/levels of alertness, and driver health outcomes will be evaluated using:

  • Electronic Logging Devices, which track drivers' time on duty
  • The Psychomotor Vigilance Test, which measures alertness
  • Actigraph watches, which assess sleep
  • Onboard monitoring systems and/or cameras that record or measure safety critical events and driver alertness
  • The Karolinska Sleepiness Scale, which measures drivers' assessment of sleepiness

Data collection began in March 2015.

Product Showcase

  • Magid® D-ROC® GPD412 21G Ultra-Thin Polyurethane Palm Coated Work Gloves

    Magid’s 21G line is more than just a 21-gauge glove, it’s a revolutionary knitting technology paired with an advanced selection of innovative fibers to create the ultimate in lightweight cut protection. The latest offering in our 21G line provides ANSI A4 cut resistance with unparalleled dexterity and extreme comfort that no other 21-gauge glove on the market can offer! Read More

  • Safety Shower Test Cart

    The Safety Shower Test Cart speeds up and simplifies emergency shower tests, ensures you stay in compliance with OSHA regulations, and significantly reduces testing costs. With 7 unique features, the cart makes testing easy, effective, and efficient. You can test water clarity, flow, temperature, and spread—all at the same time! Most safety shower testing kits create a mess, take too much time to use, and don't fully help you stay in compliance with OSHA & ANSI standards. Transform the way you test emergency showers with Green Gobbler Safety. Read More

  • Kestrel 5400 Heat Stress Tracker WBGT Monitoring for Workplace Safety

    Ensure safety with the Kestrel® 5400 Heat Stress Tracker, the go-to choice for safety professionals and endorsed by the Heat Safety & Performance Coalition. This robust, waterless WBGT meter is ideal for both indoor and outdoor environments, offering advanced monitoring and data logging essential for OSHA compliance. It features pre-programmed ACGIH guidelines and alert settings to quickly signal critical conditions. Integrated with the cloud-based Ambient Weather Network, the 5400 allows managers to view, track, and log job site conditions remotely, ensuring constant awareness of potential hazards. Its capability for real-time mobile alerts and remote data access promotes proactive safety management and workplace protection, solidifying its role as a crucial tool in industrial hygiene. Read More

Featured

Artificial Intelligence