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The municipal solid waste (MSW) is so complex but a significant
secondary source of materials. The incombustible residue after the incineration of
the MSW is known as municipal solid waste incinerator (MSWI) bottom ash that
is mostly a mix of organic and mainly inorganic materials as well as a significant
secondary source of ferrous and nonferrous (NF) metals. However, despite the
technological development of eddy current separator (ECS), the recovery of NF
contents from MSWI bottom ash, size 1-6mm remains unsatisfactory where the
splitter setting of an ECS machine plays crucial role for effective separation and
quality control of nonferrous metals and non-metals. For effective separation and
quality control of the bottom ash materials the ECS machine needs continuous
adjustment of the splitter setting which is quite impractical for a manual operator
as a result this thesis primarily addresses this issue by suggesting a sensor based
remedy for that.
Accordingly this Ph.D. thesis embodied the development of two different
kinds of sensors namely hybrid sensor and eddy current belt sensor. The hybrid
sensor was developed for the measurement of metal grade (G) of the ECS
concentrated bottom ash materials and the measured (G) was used as a qualifier
for the quality control of the bottom ash materials. Actually the hybrid sensor
produces count data for metal and non-metal particles present in the ECS
concentrated bottom ash stream where the hybrid sensor consists of infrared
sensor (IRS) for counting all types of particles present in the stream and
electromagnetic sensor (EMS) for counting only the metal particles present in
the stream. A mathematical model is developed that calculates the metal grade
(G) from the sensor count data with the pre-knowledge of average particle mass
ratio (k) between non-metal and metal.
Consequently this research first focused on design, construction and
characterization of the hybrid sensor. Each sensor section is characterized
individually in terms of sensitivity, repeatability and accuracy. The hybrid sensor
was highly repeatable to its count data and the math model for the measurement of
G was verified using the synthetic sample with known values of k i.e. were k =0.24,
0.54, 1.23 and 2.54. The same method was applied for the grade measurement of
the ECS concentrated bottom ash materials with an accuracy ±2.4%.
After the laboratory characterization a robust set up from the laboratory
prototype of the hybrid sensor was built for functionality analyses in situ. The
measurements and trends in sensor data from the laboratory and in situ for dry
feed materials were quite comparable, considering the ECS machines were
different and the bottom ashes came from different sources. The hybrid sensor
data predicted quite accurately the trend of the metal grade of the stream of the
particles with the splitter distance, which was mandatory for sensor-based control
of the ECS splitter position in bottom ash processing.
Afterwards this thesis presented an extended part of this sensor research
that resulted another fundamental investigation on the development of an eddy
current belt sensor. The purpose of the belt sensor was to identify NF scrap metals
on a conveyor that could be applied for sensor sorting and quality control of
bottom ash materials. The belt sensor relies on a mathematical method which is
called in this thesis as conductivity approach. In conductivity approach a
parameter CIF (conductivity indication factor) has been defined from where the
CIF has been found as truly a function of conductivity. This thesis suggested
producing a database of material CIF that was used for the identification of
different materials based on conductivity.
For experimental validation of the conductivity approach a set of pure
sample particles S1 of Cu, Al, and Brass, each of six generic shapes i.e. disk, disk
block, square plate, square block, rod, and cylinder were investigated. The test
analyses for the sample set S1 showed 100% accuracy for the identification of the
Cu, Al and Brass by using their average CIF values. As an application of the eddy
current belt sensor another sample set S2 i.e. a representative amount of randomly
mixed metal scraps of Cu, Al, Brass and Zn collected from a batch of bottom ash
materials was used as a test case for the identification of different metals using
their measured CIF values. As a first step towards an application of the belt
sensor, the thesis also presented a logical sorting statistics of the bottom ash
scraps based on their average CIF values. Moreover, the calculated and calibrated
conductivity values of the metal scraps using only the belt sensor were also
presented and finally some recommendations have been compiled for further
advancement of sensor sorting of waste and quality control of bottom ash
materials. |
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