Mivardi Maximus 8000-12000 MIV-RMAX
Buy Mivardi Maximus 8000-12000 MIV-RMAX
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Mivardi Mivardi Maximus 8000-12000 Reel MIV-RMAX | £93.00 |
An excellent big pit reel with a front drag designed for big carp or catfish angling.The reel is fitted with eleven stainless steel ball bearings, a heavy duty drive gear, a worm shaft and a CNC machined metal handle for maximum power transmission when retrieving line. The body is manufactured from a hard graphite alloy. A special line roller prevents the line from twisting. A very important addition to this reel is the sensitive front drag with micro adjustment. Delivered with two long metal spools (8000 and 12000) with differing line capacities. Weight - 810 g.
Spare Spool: Yes
Line Capacity: Size 8000 (0,25mm - 560m / 0,30mm - 370m / 0,35mm - 280m);Size 12000 (0,35mm - 560m / 0,40mm - 420m / 0,45mm - 350m)
Variant: Reel
Waterproof drag: Yes
Designed in: Czech Republic
Size Reel / Spool: 8000;12000
Spool Material: Aluminium
Gear Ratio: 4,5:1
Bearings: 10+1
Weight: 810 g
Body: High Strength Graphite Body
Made in: China
Series: Maximus
Spare Spool: Yes
Line Capacity: Size 8000 (0,25mm - 560m / 0,30mm - 370m / 0,35mm - 280m);Size 12000 (0,35mm - 560m / 0,40mm - 420m / 0,45mm - 350m)
Variant: Reel
Waterproof drag: Yes
Designed in: Czech Republic
Size Reel / Spool: 8000;12000
Spool Material: Aluminium
Gear Ratio: 4,5:1
Bearings: 10+1
Weight: 810 g
Body: High Strength Graphite Body
Made in: China
Series: Maximus
Product description is based on database from online stores. Be sure to verify all information directly with seller before purchasing.
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