Περίληψη:
Mercury and its species occur naturally in all fossil fuels, such as natural gas (NG), crude oil, and coal. The concentration of mercury in oil and gas varies depending on source, but it is
usually of the order of a few parts per billion (ppb). However, even at these very low
concentrations, mercury and its species can cause significant problems during oil & gas
processing and, therefore, its levels in a plant must be monitored. Mercury is toxic to living
organisms and, for this reason, strict regulations are in place regarding mercury emissions to
the environment from industrial activities. In addition, mercury can cause catalyst poisoning
and corrode the equipment through various mechanisms, such as Liquid Metal Embrittlement
(LME)[1]. Indicative of the risk that Hg poses to process is the fact that until today about 10
industrial accidents have been recorded, which were caused by corrosion of equipment by
mercury.
For the proper management of mercury in oil & gas treatment plants, it is necessary to know
the distribution of mercury in the different phases, e.g. gas, liquid, aqueous, during drilling
and topside treatment processes. Scientific research in this field is currently active. Although
some thermodynamic models describing the distribution of elemental mercury in NG have
already been proposed, there are still aspects of the issue that are not sufficiently covered in
the literature. For example, although in the vapor and liquid streams of the NG processing
plants various mercury forms other than elemental, such as HgS, HgCl2, MeHg, Me2Hg etc.
have been identified, their distribution has not been described so far with any thermodynamic
model. The existence of other forms of mercury apart from the elemental indicates that it
may also participate in reactions during NG processing, which have not been investigated in
the open literature nor have they been included in any model. The development of such a
model becomes even more complicated if one takes into account the
adsorption/chemisorption of mercury on piping and equipment walls, and also the great
variation in pressure and temperature along the natural gas value chain.
The aim of the thesis is to develop a thermodynamic model that can accurately describe the
simultaneous chemical & phase equilibria (CPE) of mercury in natural gas, and its application
in the simulation of Hg distribution in natural gas processing plants. Towards this, the UMRPRU EoS/GE model is extended to mixtures of mercury with compressed gases (CO2, N2),
hydrocarbons, water, and polar compounds that are often encountered during oil & gas
processing, such as amines, glycols and alcohols. For comparison purposes, the widely used
cubic EoS SRK and PR are also employed. To ensure that the models correctly predict the
vapor pressure of pure mercury, different functions for their attractive term are examined.
For UMR-PRU and PR the Mathias-Copeman a-function is proposed, while for SRK the afunction by Twu is employed. Pertinent a-function parameters are fitted to pure mercury
experimental vapor pressure data with average absolute relative deviation (AARD) lower than
1%. Afterwards, model interaction parameters are fitted to experimental Hg solubility
measurements. For the cubic EoS, generalized correlations for the binary interaction parameters are developed for hydrocarbons, while for polar compounds temperaturedependent BIPs are determined. The overall results show that UMR-PRU yields the best
results in binary hydrocarbon and polar mixtures of mercury, while it also yields the lowest
deviations in most multicomponent hydrocarbon mixtures and in all polar multicomponent
mixtures.
In order to study the possible reaction between mercury and hydrogen sulfide in natural gas
(Hg0 + H2S β-HgS + H2), the UMR-PRU model is also extended to mixtures of hydrogen with
compressed gases (CO2, N2), hydrocarbons, water, and polar compounds. For comparison, the
PPR78 model is also employed. The ability of PR to predict pure hydrogen properties is
checked, and the Soave expression for the attractive term is found to yield the best results,
while also ensuring that the a-function is consistent. UMR-PRU model interaction parameters
are then determined by fitting binary vapor-liquid equilibrium data for hydrogen binary
mixtures. It is found that UMR-PRU shows a lower overall deviation in bubble point pressure
(8.1%) than PPR78 (13.2%). Both models are also employed for predictions in
multicomponent hydrogen mixtures with hydrocarbons and compressed gases, with UMRPRU yielding the best results.
After successful model extension to mercury and hydrogen mixtures, UMR-PRU is employed
for calculating mercury saturation concentration in typical hydrocarbon fluids. For this
purpose, the multiphase flash algorithm that was developed in this work is employed, which
can handle systems that contain up to four phases: vapor-liquid hydrocarbon-aqueousmercury. The results show that mercury solubility in the various phases increases
exponentially with temperature and generally increases in the order aqueous < vapor < liquid
hydrocarbon phase. The effect of pressure on mercury solubility in the different phases is also
examined, and results show a weak dependency in the liquid hydrocarbon and aqueous
phases. On the other hand, Hg0
solubility in the vapor phase is found to decrease with
pressure, until a plateau is reached. Phase composition is found to play an important role and
different behaviors can be observed, e.g. in fluids involved in early-stage separation processes
from those that can be found in the condensate stabilization train of a gas processing plant.
The second point of focus in this work is the theoretical study of the reaction between
elemental mercury and H2S in natural gas, which could provide an explanation for the origin
of β-HgS solid particles found in condensate tank sediments. Chemistry dictates that mercury
has a high affinity for sulfur and its compounds, and H2S is the most abundant sulfuric
compound in natural gas, so a reaction between them is deemed reasonable. Both cases of
vapor and liquid phase reaction are examined by calculating the pertinent equilibrium
constants. Then, the simultaneous chemical & phase equilibria in the same fluids were solved
by employing the Gibbs energy minimization algorithm developed in this work.
The UMR-PRU model is subsequently employed for simulating mercury distribution in an
existing offshore natural gas processing platform. For comparison the SRK-Twu model is also
used, and model results are compared to field measurements regarding mercury
concentration in selected streams. For the purposes of this study, a simplified version of the process is implemented in UniSim Design R460.2 and the distribution of mercury in the
various streams is examined. The effect of the reaction between mercury and H2S is also
studied. Different scenarios are considered, based on the presumed amount of mercury in
the plant feeds according to mass balance calculations. Mercury partitioning in the TEG
dehydration & regeneration process, as well as in MEG regeneration are also examined in
separate simulations. The results in the case of no reaction show that both models yield very
good predictions regarding mercury concentrations in process gases, but overpredict Hg
levels in condensate fluids. UMR-PRU is found to yield the most accurate results for Hg
distribution in aqueous streams, as well as in the processes involved in TEG dehydration &
regeneration, and MEG regeneration.
On the other hand, when the reaction is also included, it is found that the models yielded
better results for Hg concentration in condensates, but deviate from the measurements in
gas streams. In addition, UMR-PRU predicts an amount of produced solid β-HgS, which is
closer to the expected value based on the field data. Considering the uncertainty of
measurements concerning Hg concentration in liquid samples due to various experimental
challenges, it is deemed that UMR-PRU yields the best overall results, while it is also capable
of describing processes involving polar compounds, such as TEG dehydration & regeneration,
where classical cubic EoS perform poorly.
Finally, the developed CPE algorithm is applied for the study of complex mixtures involving
non-reactive and reactive azeotropes. Such mixtures are commonly encountered in the
chemical and petroleum industry, and require advanced thermodynamic tools that can
accurately predict their equilibria. Such tools are important in order to determine the
feasibility of separation processes, such as reactive distillation. In this work, the CPE algorithm
is applied for studying the MTBE synthesis from methanol and isobutene, as well as the
synthesis of isopropyl acetate via esterification of acetic acid with isopropanol. The algorithm
is coupled with classical activity coefficient models, UNIQUAC and NRTL, as well as with UMRPRU. The results show that the CPE algorithm is very robust, and that thermodynamic models
coupled with the algorithm can successfully describe the chemical & phase equilibria involved in these systems, providing important information about the feasibility of separation processes.