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This RC car LED lights is specially designed for 1/8 1/10 1/18 RC Simulation Model Car.
Topelio Score
Poor
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Updated fa 4 mesos
- This RC car LED lights is specially designed for 1/8 1/10 1/18 RC Simulation Model Car.
- 1:10 replica of PIAA classic spotlight details, double lens lamp head. Small in size, it retains rich details and is one of the smallest in the market at the same level (dual LED light source), closer to the 1:10 ratio, and the effect is more realistic.
- The lamp bead voltage is 3~7.4V, the total power is 0.4W, and it can only be used with no more than 2S Lipo batteries.
- Standard 2.54 DuPont double-wire plugs can be directly plugged into various receivers, JST female connectors, and light boards.
- Made of high-quality plastic, manufactured by high-precision mold injection molding, with exquisite workmanship.
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Product History
Product added to Topelio
Ce produit a รฉtรฉ ajoutรฉ ร notre catalogue
Key Specifications
Specifications
- Color
- Black
- Dimensions
- Inches ร Width ร en_CA ร 0.71 ร Inches ร Height ร en_CA ร 0.71 ร Inches ร Length ร en_CA ร 0.71
Product Info
- Brand
- PALUMMA
- Dimensions
- Inches ร Width ร en_CA ร 0.71 ร Inches ร Height ร en_CA ร 0.71 ร Inches ร Length ร en_CA ร 0.71
- Sales Rank
- #25,109
- Identifiers
- ASIN
- B0C4SFWY28
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