The Yong Ju Precision Technology Co. Ltd. 4 STAR FDW-2432 is a high-performance vertical machining center designed for heavy-duty CNC milling applications. Featuring a robust 3-axis configuration with an optional 4th axis, this machine delivers precision and reliability for demanding production environments. The large worktable measures 126.000 inches in length by 94.500 inches in width, providing ample space for sizable workpieces, while the absence of index or rotary table support emphasizes its focus on standard vertical milling tasks. The spindle is oriented vertically with a CT-50 taper, capable of reaching a maximum speed of 6,000 RPM (with an optional 4,500 RPM setting), and is powered by a 25.0 HP motor (30-minute rating), with an optional upgrade to 34.9 HP for enhanced cutting performance. Tool management is handled by an automatic tool changer (ATC) with a standard capacity of 32 tools, expandable up to 120 tools for increased flexibility. The machine does not include a pallet changer, maintaining a straightforward setup for single-part operations. The X, Y, and Z axis travels and feed rates are engineered for efficient material removal and accurate positioning, though specific values are not provided. With its heavy-duty construction, large table, and versatile spindle options, the FDW-2432 is well-suited for industries requiring high-precision, large-format machining.
Yong Ju Precision Technology Co. Ltd. 4 STAR FDW-2432 VERTICAL MACHINING CENTER Technical Specifications | Aucto
Technical Attributes
Spindle Taper
CAT 40
Table Size (LxW)
126 x 94.5
Max Spindle Speed
6,000.00
Spindle Power
25.00 HP
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