NiuLumea Piston Bumper 886113 Porter-Cable RN175 Type 1/2, FN250A Nailer, NSS150 Stapler | for Replacement Part forRoofing & Finishing Nailers
【 and 】Made of material, our Piston Bumper 886113 is and built to last, long-lasting performance.
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Updated 1 місяць тому
- 【 and 】Made of material, our Piston Bumper 886113 is and built to last, long-lasting performance.
- 【Compatibility】This replacement part is for for Porter Cable RN175 Type 1 and Type 2 Roofing Nailers, FN250A Finishing Nailer, and NSS150 Extra Narrow Crown 18 Gauge Stapler, providing versatile use for various nailers and staplers.
- 【Essential Replacement Part】The piston bumper is a crucial component in nailing machines and staplers, offering optimal functionality and damage to the equipment.
- 【Easy Installation】With the specific part number 886113, this piston buffer is designed for easy installation, allowing for a hassle-free replacement process.
- 【Package Included】Each purchase includes 1 Piston Buffer, you have the necessary replacement part to maintain the efficiency of your nailing machine or stapler.
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Product Info
- Brand
- NiuLumea
- Identifiers
- ASIN
- B0G8K4Q2Y7
- Last Updated
- 3 місяці тому
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