The Cincinnati Gilbert Table-Type D Horizontal Machining Center is a robust, precision-engineered machine designed for high-performance horizontal machining applications. Featuring a 72" x 48" table with an optional 84" x 48" configuration, it supports workpieces up to 8,000 lbs, making it suitable for heavy-duty production environments. The horizontal spindle utilizes a #50 taper, with a maximum spindle speed of 1,450 RPM (upgradable to 2,500 RPM) and a 30 HP (30-minute rating) motor, with an optional 50 HP motor for enhanced cutting power. The machine is equipped with an automatic tool changer (ATC) supporting 36 tools and a tool change time of 30 seconds, ensuring efficient operation. Optional pallet changer capability with up to two pallets further increases productivity. The machining center offers three standard axes (X, Y, Z) with optional fourth-axis capability, providing flexibility for complex machining tasks. Axis travels are 72" (X, up to 120" optional), 60" (Y, up to 108" optional), and 48" (Z, up to 96" optional), with a maximum feed rate and rapid traverse of 200 ipm on all linear axes. The rotary axes provide 100° (A-axis) and 360° (B-axis) rotation for advanced contouring and multi-sided machining. This machine combines durability, versatility, and precision, making it ideal for demanding industrial applications.
CINCINNATI GILBERT TABLE-TYPE D HORIZONTAL MACHINING CENTER Technical Specifications | Aucto
Technical Attributes
X-Axis Travel
72.00 ''
Spindle Power
30.00 HP
Y-Axis Travel
60.00 ''
Max Spindle Speed
1,450.00
Table Size (LxW)
72 x 48
Spindle Taper
#50
Z-Axis Travel
48.00 ''
Data Accuracy and Verification
Specifications and technical details are compiled from manufacturer documentation, historical records, and third-party industry sources. While care is taken to ensure accuracy, this information is provided for reference purposes only and may contain errors or omissions. Users should independently verify all details before relying on them.
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