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Toyota Mirai Hydrogen Car Faces Steep 65% Depreciation in Just One Year, Sparking Market Concerns

A recent report indicates that the Toyota Mirai hydrogen fuel cell vehicle has experienced a significant 65% loss in value within a single year. This substantial depreciation raises questions about the long-term financial viability and market acceptance of hydrogen-powered cars. The news, published on February 21, 2026, by Hacker News, highlights a critical challenge for the emerging hydrogen vehicle segment, potentially impacting consumer confidence and future investment in this technology. Further details regarding the causes and implications of this depreciation are anticipated.

Hacker News

The Toyota Mirai, a prominent hydrogen fuel cell vehicle, has reportedly undergone a dramatic 65% depreciation in value over a mere one-year period. This striking decline in resale value, as noted in a report from Hacker News on February 21, 2026, brings to light significant challenges facing the hydrogen car market. Such a substantial loss in value could deter potential buyers and investors, impacting the broader adoption of hydrogen technology in the automotive industry. The implications of this rapid depreciation extend to the perceived reliability and economic sustainability of fuel cell electric vehicles (FCEVs) compared to their battery electric vehicle (BEV) counterparts or traditional internal combustion engine (ICE) cars. While the original news content is brief, the headline itself points to a critical issue that warrants further investigation into factors such as limited refueling infrastructure, high initial purchase costs, and evolving consumer preferences in the alternative fuel vehicle sector. The market's reaction to such a steep depreciation for a relatively new and technologically advanced vehicle like the Mirai will be closely watched as the automotive industry continues its transition towards sustainable transportation solutions.

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