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Nuro’s R2 AV receives USDoT green light

Nuro’s R2 driverless goods carrier has received the green light to operate from the US Department of Transportation and National Highway Traffic Safety Administration.
February 13, 2020 Read time: 2 mins
Nuro R2: zero occupancy (credit: Nuro)

Built to carry packages – rather than people - R2 will begin public road testing in advance of its first deliveries to customers’ homes in Houston, Texas, “in the next few weeks”, Nuro co-founder Dave Ferguson says.

Nuro has received an exemption to operate, but Ferguson is calling on legislators to move with the times. 

“Exemptions are a temporary fix for an industry that’s reimagining what it means to drive,” he says. “Moving forward, we must modernise the existing regulations that never envisioned a vehicle without a driver or occupants.”

R2 is Nuro’s second-generation self-driving vehicle and is “custom-designed…to enrich local commerce with last-mile delivery of consumer products, groceries, and hot food from local stores and restaurants”, according to Ferguson.

Narrower than a conventional passenger car, R2 taps into consumers’ current vogue for on-demand deliveries to their homes – which customers retrieve from R2’s compartments using a private code.

However, there is already disquiet about the rise of autonomous vehicles (AVs) leading to an increase in congestion. Some transport experts have spoken of a potential nightmare scenario in which vehicle occupancy is zero – because AVs are driving round without passengers. 

But for Nuro, this is its unique selling point: “A self-driving vehicle, but not just a driverless vehicle — a passenger-less vehicle,” says Ferguson. “A zero-occupant vehicle.”

He adds that R2 has the potential to be safer than passenger vehicles: “More nimble, narrower, and better able to prioritise the well-being of other road users.” 

The company says R2’s sensor array has been updated, with two-thirds more compartment space added “without increasing vehicle width”. 

Temperature control will help keep food fresh and battery life has been boosted, “enabling all day operation”.
 

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