Abstract

Prior to dispatch of sinter to the blast furnace for hot metal production, the sinter product from the sinter cooler is screened to remove smaller/finer particles. The undersize so generated is called internal return fines, which are generally recirculated into the sintering machine. A very high level of internal return fines generation limits the use of virgin ore for sintering which may hamper sinter productivity. Recently, the sinter plant at Tata Steel’s Kalinganagar works has faced issues of high internal return fines generation. As the sinter plant begins to increase its productivity levels, it becomes critical to control the generation of internal return fines to allow fresh material consumption. Limited literature is available on factors affecting the internal return fines generation in sinter plant. Given the current computational capabilities, a machine learning model was developed to ascertain the factors affecting the internal return fines generation. The development of the machine learning model and the optimization carried out based on model output is described in this work. The key parameters affecting the internal return fines generation were the sintering rate, sinter basicity, charge density and temperature in the ignition hood. In Kalinganagar, the increase in ignition hood temperature was limited by the furnace refractory condition. Further, the sinter basicity is determined by the percentage of sinter in blast furnace burden. Incorporating these constraints, the model was used to optimize the process parameters to generate the lowest possible return fines. The understanding generated from this machine learning framework has resulted in a reduction of 2-3% in internal return fines generation, which implied higher net sinter production.

Highlights

  • Sintering process is the most widespread method to agglomerate iron ore fines in the Indian steel industry

  • It is clear from the table below that the internal return fines generation is impacted by the rate of sintering (Suction, burn through length, flame front speed), characteristics of the bonding phases and packing of the green mix on the sinter bed

  • Limited literature was available on factors affecting internal return fines generation So, to better articulate the factors affecting the internal return fines generation, an extensive study starting from pile blending to sintering process parameters was pursued

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Summary

Introduction

Sintering process is the most widespread method to agglomerate iron ore fines in the Indian steel industry. A mix of iron ores fines, fluxes and solid fuel (coke breeze), previously homogenized and pelletized, are discharged onto a moving strand and leveled to form a homogeneous bed. The sinter product is formed along the strand through the physical and chemical processes occurring within the bed. Combustion of coke breeze takes place in a flame front which migrates across the bed. This flame front should reach the grate of the machine at a certain distance before the strand ends, since the cooling stage should begin in the last part of the strand [1]. The sinter is cooled in a rotary cooler using forced

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